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Export markets and microenterprise performance: Evidence from Vietnam
Brian McCaig
Department of Economics,
Wilfrid Laurier University
Nina Pavcnik
Department of Economics,
Dartmouth College
and
The National Bureau of Economic Research
December 2018
First draft: August 2013
Preliminary
Abstract
Most workers in low-income countries are self-employed and work for a household-owned business
or a farm. We examine how export opportunities induced by the 2001 U.S.-Vietnam Bilateral Trade
Agreement affect the performance of non-farm microenterprises in Vietnam. On average,
microenterprises in industries with greater declines in U.S. tariffs on Vietnamese exports are more
likely to exit and surviving microenterprises expand revenue, while other outcomes are not
affected. However, the responses to tariff cuts differ with the initial size of the microenterprise and
the gender of the manager. Female-run microenterprises are less likely to exit if they are small and
become more likely to exit with size. In contrast, male-run businesses are more likely to exit if small
and exit becomes less likely as size increases. Initially small microenterprises experience a
contraction of revenue, while initially larger businesses account for the observed expansion of
revenue within an industry in response to tariff cuts. We also find evidence of adjustment in the
prevalence of operating the business as the individual’s primary job and the incidence of hiring
workers from outside the family that varies by gender and initial size.
1. Introduction
Non-farm microenterprises are prevalent and account for a large share of employment in
low income countries (Gollin 2002, Banerjee and Duflo 2007, Bento and Restuccia 2018). For
example, 80% of manufacturing workers in India were employed by informal firms (Nataraj 2011).
The high prevalence of microenterprises contributes toward lower aggregate productivity in low-
income countries (Hsieh and Klenow 2009, Bento and Restuccia 2018, McCaig and Pavcnik 2018).
Understanding the factors that influence their performance is also crucial for the livelihoods of
families in low-income countries as these microenterprises contribute a sizable share of household
income. Consequently, a large literature examines the effects of various targeted interventions that
aim to relieve supply constraints facing microenterprises ranging from access to credit, business
training, and assistance with business registration (see Banerjee, Karlan, and Zinman 2015,
McKenzie and Woodruff 2014, Bruhn and McKenzie 2014 for respective surveys). Less is known
about how microenterprise performance is affected by nation-wide policies, including trade
agreements. Policy makers often motivate the use of such policies to alleviate poverty in low-
income countries, but much of the studies of the effects of trade policy on firm performance has
been confined to firms in registered manufacturing, thus not capturing the effects of trade policy on
performance of firms in which the poor are more likely to work and potentially missing an
important margin of adjustment (see Harrison and Rodriguez-Clare 2010, Goldberg and Pavcnik
2016 for recent reviews).
In this paper, we examine the effects of output-market shocks (i.e., demand-side) on the
performance of non-farm microenterprises in Vietnam. Non-farm microenterprises play an
important role in Vietnam, accounting for 66% of manufacturing workers, 68% of workers outside
of agriculture, and 23% of household income in 2001/02 (Benjamin, Brandt, and McCaig 2017). We
focus on how new export market opportunities, induced by the 2001 U.S.-Vietnam Bilateral Trade
Agreement (henceforth the BTA) influenced performance of microenterprises in Vietnam.
The BTA and the available data provide an excellent setting to study the consequences of new
export opportunities for microenterprises. The main immediate policy change in the BTA was a
large reduction on U.S. tariffs on imports from Vietnam and these tariff cuts varied substantially
across Vietnamese industries in ways not related to industry-specific political influence and
contemporaneous economic conditions (McCaig 2011, McCaig and Pavcnik 2018). Our research
design uses this differential and arguably exogenous exposure of microenterprises in different
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industries to tariff changes to overcome the inherent identification concern in studying the effects
of international trade on microenterprise performance, whereby forces that influence
microenterprise performance such as urbanization and economic growth also directly impact a
country’s participation in international trade.
We link these declines in export costs with detailed data on microenterprises from the
nationally representative Vietnam Household Living Standards Surveys (VHLSS) that span the policy
change. Our analysis primarily relies on a module on microenterprises with a panel subcomponent.
The definition of a microenterprise in Vietnam is based on the registration status of a firm,
consistent with the practice in studies of microenterprise performance in development economics
in other settings (La Porta and Shleifer 2008, 2014, Nataraj 2011, Ulyssea 2018). The data enables
us to examine the effects of declines in tariffs on several measures of microenterprise performance,
including exit, entry, revenue, hiring of non-family workers, whether a microenterprise has a
business license (a step toward formality), whether the microenterprises is the manager’s primary
job, and whether the business operates for 12 months.
We find that the U.S. tariff reductions are associated with increase exit rates and revenue
growth among the surviving firms. Among female managers, initially smaller businesses are less
likely to exit in response to the tariff reductions and exit becomes more likely for larger female
businesses. In contrast, among male managers, exit is more likely for smaller businesses in response
to the tariff reductions and decreases with business size. Despite large rates of overall entry,
microenterprise entry is not strongly related to the tariff reductions. Among surviving businesses,
we find that revenue increases in response to the tariff reductions, largely due to male-run
businesses. Among female managers, there is an increase in the probability of hiring outside
workers and a decrease in the likelihood of having a license. For male managers, we find evidence
of an increase in the prevalence of having a license. We find little evidence of average effects on the
business being the manager’s primary job or the business operating full-time. These average results
hide significant variation in effects based on initial size. We find revenue contraction among the
initially smallest microenterprises and relative expansion among the larger microenterprises. For
male managers, initially small microenterprises were less likely to be the manager’s primary job
whereas the initially larger ones became more likely to be the manager’s primary job in response to
the BTA.
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These results highlight the importance of looking at the heterogeneous effects of tariff cuts
across microenterprises by size and manager gender for understanding exit and growth. Underlying
business heterogeneity also features importantly in the microenterprise literature (Maloney (2004),
Rogers and Swinnerton (2004), La Porta and Shleifer (2008), De Mel, McKenzie, and Woodruff
(2013)).
Our results, combined with evidence from McCaig and Pavcnik (2018), provide insights on
how export opportunities induce the reallocation of workers between microenterprises and
employers in the formal sector in low-income countries and microenterprise performance.
Importantly, the identification of the effects of the BTA on microenterprise performance is based on
comparisons of businesses in industries that received larger tariff cuts to those in industries with
lower tariff cuts. Thus, our results suggest that export market opportunities expand revenue and
hiring of outside labor toward industries with bigger tariff reductions within the microenterprise
sector. However, it is important to put this in a broader general equilibrium perspective. Evidence
in McCaig and Pavcnik (2018), based on nationally representative labor force data that includes
employment in microenterprises and the enterprise sector, shows that the share of workers
working for microenterprises in an industry declines in response to tariff cuts, consistent with
predictions of models such as Melitz (2003), Gollin (2008), and Lucas (1978). Thus, overall export
market opportunities are expanding employment among the formal enterprises more than among
the microenterprises. While the current paper finds evidence that some microenterprises are more
likely to hire outside labor in response to expanded export market opportunities (perhaps because
they subcontract with larger firms that directly export) and the surviving firms expand revenue,
these effects appear to be dominated by an even greater expansion of employment opportunities
among the formal employers in industries with greater export opportunities. Thus, it appears that
expansion of formal jobs is not occurring because of an absolute contraction of the informal sector,
but instead by a relatively greater expansion of the jobs in the formal sector in response to export
market opportunities.
Our study is related to several literatures. We contribute to the existing literature on
microenterprise performance. The majority of this literature examines the responses of
microenterprises to changes in supply-side constraints, including credit, business training, and
registration assistance (see Banerjee, Karlan, and Zinman 2015, McKenzie and Woodruff 2014,
Bruhn and McKenzie 2014 for respective surveys). Interventions and policy changes that influence
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output markets and the corresponding micro mechanisms of adjustment within and between
microenterprises have received less attention in the literature. We contribute to an emerging
literature that focuses on the effects of demand side policies for microenterprise performance.
Some of these studies have examined the removal of small product reservations on small and
medium enterprises (see Rotemberg 2018, Martin, Nataraj, and Harrison 2017), and trade policy
(Edmonds and Pavcnik 2006, Nataraj 2011, Brambilla, Porto, and Tarozzi 2012, and Atkin,
Khandelwal, and Osman 2017). Most of these studies focus on demand-side interventions that
directly affect microenterprises. Our setting examines a policy change that is expected to directly
benefit firms in the formal enterprise sector (Melitz 2003, Demidova and Rodriguez-Clare 2013).
Consequently, as we discuss in the conceptual framework in section 3, this policy will likely
influence microenterprises through the general equilibrium effects of trade either through
competition in product markets, the opportunity cost of working in a microenterprise and other
options, or through subcontracting. Indeed, McCaig and Pavcnik (2018) find that the BTA was
associated with reallocation of workers from microenterprises to formal registered firms. The
current paper examines how this influences microenterprise performance directly.
We also contribute to the literature on the effects of trade on firm performance. Both
theoretical and empirical studies clearly establish that initially larger, more productive firms expand
and upgrade technology, quality, and or productivity, while smaller firms contract and exit (Melitz
(2003), Verhoogen (2008), Iacovone and Javorcik (2008), Bustos (2011), Lileeva and Trefler (2010)).
These findings are confined to registered manufacturing firms, with Nataraj (2011) and Brambilla,
Porto, and Tarozzi (2012) being notable exceptions. Our study contributes to this literature by
showing whether and how these trade policy changes influence microenterprise performance,
which is important for understanding how trade affects the livelihoods of households in low-income
countries given that microenterprises account for a large share of household income. The nature of
trade policy change matters (Goldberg and Pavcnik 2016). Previous studies have focused on
increased import competition (Nataraj 2011) and increased costs of accessing export markets due
to temporary antidumping duties (Brambilla, Porto, and Tarozzi 2012). Our study complements the
existing work by focusing on a permanent reduction in export costs induced by a trade agreement.
This is important given the belief among policy makers about the importance of increased market
access for poverty reductions in low-income countries implicit in many recent trade agreements,
including the Comprehensive and Progressive Agreement for Trans-Pacific Partnership and the
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Doha round of the WTO negotiations. Importantly, combined with McCaig (2011) and McCaig and
Pavcnik (2018), it shows the importance of general equilibrium effects of trade that operate
through the labor market.
The paper proceeds as follows. Section 2 describes the key policy changes in the BTA and its
features that provide the basis for our research design. Section 3 discusses the definition of a
microenterprise in Vietnam and overviews the conceptual framework about how declines in export
costs are expected to affect microenterprise performance. Section 4 describes the data and
characteristics of microenterprises. Section 5 introduces our econometric methodology. Section 6
presents the results and Section 7 discusses the implications of our findings and concludes.
2. Background on the U.S.-Vietnam Bilateral Trade Agreement
The literature on the effects of aggregate demand shocks on microenterprise performance
is scarce. Our study focuses on the consequences of a product-level demand shocks induced by
implementation of a trade agreement. In this section, we describe the U.S.-Vietnam Bilateral Trade
Agreement (BTA) and highlight its key features that we utilize in our empirical methodology and
identification strategy in Section 5. This description is taken from McCaig and Pavcnik (2018).1
The BTA was implemented on December 10, 2001.2 The agreement led to negligible changes
in Vietnam’s import tariff commitments to the U.S. because Vietnam already applied Most Favored
Nation (MFN) tariffs on U.S. imports.3 The main trade policy change was for the U.S to immediately
grant Vietnam Normal Trade Relations (NTR) or MFN access to the U.S. market. Prior to the BTA
Vietnam was subject to tariffs according to Column 2 of the U.S. tariff schedule. With the BTA,
Vietnam became subject to MFN tariff rates. In our analysis, we use industry-level U.S. import ad
valorem equivalent tariffs applied to Vietnamese exports constructed from these two tariff
1 Future versions of the paper will provide a shorter summary of this analysis. 2 See STAR-Vietnam (2003) and McCaig (2011) for an extensive discussion of the BTA. 3 The BTA required Vietnam to reduce import tariffs on approximately 250 (out of approximately 6000) 6-digit HS agricultural and manufactured food products. As these tariff cuts were small in comparison to the U.S. tariff cuts and only affected a relatively small number of products, we do not discuss them in detail. Our results are robust to controlling for these tariff cuts. As part of the BTA, Vietnam was required to implement various regulatory and legal changes over a period of 10 years following the implementation of the BTA. These included commitments to improve market access in services such as banking and telecommunication, intellectual property rights, and protection of foreign direct investment (STAR-Vietnam (2003)).
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schedules by McCaig (2011) as the main policy variable to measure the industry-level policy cost of
accessing export markets.4
Our identification strategy in Section 5 relies on several features of the U.S. tariff declines.
Table 1 summarizes industry tariff levels and changes overall and for broad sectors. First, the U.S.
tariff cuts were large, as the BTA on average reduced tariffs by 20.9 percentage points, from 23.4 to
2.5 percent. The large magnitude of tariff cuts makes it ex ante plausible to separate the effects of
changes in tariffs from confounding changes in the Vietnamese economy. Our empirical
methodology in Section 5 relies on the heterogeneity of tariff declines across industries to identify
the effects of lower exporting costs on performance of microenterprises. Thus, a second useful
feature of the BTA is that the tariff cuts varied widely across industries. As Table 1 suggests, the
standard deviation of the industry tariff decline is 17.9 percentage points. Industries within
manufacturing experienced the largest average tariff cut of 30.2 percentage points, with the
average tariff falling from 33.8 to 3.6 percent.
Importantly, McCaig and Pavcnik (2018) show that these tariff declines significantly affected
the volume and structure of Vietnamese exports to the U.S. and worldwide. During this period,
Vietnam’s aggregate worldwide exports were expanding, but the exports to the U.S. grew even
more. Figures 1 and 2, also reported in Fukase (2013), show the value and the share, respectively,
of Vietnamese exports to the U.S. from 1997 through 2006. The implementation of the BTA led to a
significant surge in exports, which is evident from the break in trend in 2001 in Figure 1. This break
is especially pronounced for manufactured exports, which experienced substantially larger BTA
tariff cuts than primary sector exports.5 Figure 2 indicates that the share of Vietnamese exports
going to the U.S. grew rapidly from 5.1 percent in 2000 to 19.0 percent in 2004 and this increase
was primarily driven by manufacturing, where U.S. exports accounted for 26.1 percent of
Vietnamese exports by 2004.6 The top eight exports to the U.S. according to 2004 value by industry
4 McCaig (2011) uses detailed information on U.S. tariffs for both of these tariff schedules from the U.S. International Trade Commission’s online Tariff Information Center and computes the ad valorem equivalent of any specific tariffs. He then matches the tariff lines to industries by the concordance provided by the World Bank via the World Integrated Trade Solution database to construct industry-level tariffs according to 2-digit ISIC industry nomenclature. This classification closely matches the industry classification in the VHLSSs. 5 Total manufacturing exports also increased following the BTA, as they grew at an annual rate of 23.4% between 2001 and 2006 as compared to 12.8% between 1997 and 2001. The corresponding figures for total exports are 13.1% between 1997 and 2001 and 21.5% between 2001 and 2006. 6 As a non-member of GATT and the WTO, Vietnam was not subject to the Multi Fibre Agreement and did not initially face any export quotas for textile and apparel products destined for the U.S. In July 2003, a bilateral textile
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were apparel; footwear; textiles; food products and beverages; furniture; agriculture; refined
petroleum; and office, accounting and computing machinery.
Figure 3 shows the relationship between growth in exports to the U.S. between 2001 and
2004 and tariff changes across 2-digit ISIC industries. A strong negative relationship suggests that
industries with greater tariff cuts experienced faster export growth. McCaig and Pavcnik (2018) find
that the industry-level regression of the change in log exports to the U.S. between 2001 and 2004
on the change in U.S. tariffs yields a statistically significant estimate of the coefficient on the change
in U.S. tariffs for traded industries and for manufacturing.
Importantly, this BTA-related expansion of U.S. exports is not driven by industry-specific
global demand shocks. Unlike exports to the U.S., Vietnamese exports to the E.U. were already
subject to MFN tariffs prior to the implementation of the BTA (STAR-Vietnam (2003)). As a high-
income export market destination, the E.U. likely faces similar industry-specific demand for low-
income country exports as the U.S. market. To the extent that U.S. tariff changes are correlated
with these shocks, BTA-induced tariff changes would also be spuriously correlated with Vietnamese
exports to the E.U. However, analysis suggests no association between the changes in U.S. tariffs
and changes in Vietnamese exports to the E.U. (see Appendix Table A.1 in McCaig and Pavcnik
(2018)). It is therefore unlikely that BTA-induced tariff changes are spuriously correlated with
industry-specific global demand shocks for Vietnamese goods.7
A fourth useful feature of the U.S. tariff cuts induced by the BTA is that the usual concern
about the political economy of protection and the endogeneity of tariff changes are potentially less
severe. Industry-specific tariff cuts occurred by the U.S. reassigning Vietnam from one pre-existing
tariff schedule to another. Prior to the BTA, imports from Vietnam were covered by Column 2 of the
U.S. tariff schedule, whereas after the BTA they were covered by Most Favored Nation tariffs, also
known as Normal Trade Relations. The Column 2 and MFN tariffs began to diverge in 1951 when the
agreement came into force that imposed quotas on Vietnamese textile and apparel exports to the U.S. This agreement is likely responsible for the reduction in the rate of growth of the share of U.S.-bound Vietnamese manufacturing exports following 2003. In the analysis below, this is one of the reasons why we restrict our period to the two years immediately following the implementation of the BTA. To the extent these quotas affected Vietnamese households in 2003 they would likely attenuate our findings. 7 We obtain qualitatively similar results when we exclude industries whose exports accounted for less than 0.5% of total Vietnamese exports in 2001. We also find qualitatively similar results when we use growth rates as in Davis
and Haltiwanger (1992) as a dependent variable. These growth rates are defined as
and accommodate zero exports in an industry at either the start or end of the period.
1 10.5t t t tg y y y y
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U.S. assigned Vietnam and twenty other communist countries to a list of countries without normal
trade relations. These countries became subject to substantially higher Column 2 tariffs, which were
based on tariffs levels legislated by the Tariff Act of 1930 (Pregelj (2005)). The Column 2 tariff rates
have remained relatively unchanged over time (Pregelj (2005)). Immediately prior to the BTA, the
mean Column 2 tariff across 4-digit HS products remained essentially unchanged, at 31.2 and 31.5
percentage points, respectively in 1997 and 2001, and the correlation was 0.991 (McCaig (2011)).
While the U.S. MFN tariffs have fallen over time, Vietnam was not part of the negotiation process as
a non-member of the GATT and the WTO.
The U.S. tariff cuts were presented as an all-or-nothing package whereby exports from
Vietnam into the U.S. would immediately be covered by MFN tariff rates (negotiated among the
WTO members in a round that concluded by 1995) instead of Column 2 tariffs. The movement of
Vietnam from one pre-existing U.S. tariff schedule to a second pre-existing U.S. tariff schedule
implies that neither U.S. nor Vietnamese industries had an opportunity to influence the tariff cuts
faced by specific industries at the time of the implementation of the BTA.
McCaig and Pavcnik (2018) further confirm the lack of correlation between BTA-induced
tariff changes and pre-existing industry trends and levels. In particular, BTA-induced tariff changes
do not appear to be related to pre-existing trends in Vietnamese exports to the U.S nor to other
high-income destinations such as the E.U. A falsification check of the growth of exports to the U.S.
between 1997 and 2000, where the industry-level pre-BTA tariffs are matched with exports in 1997
and the post-BTA tariffs are matched with exports in 2000, yields a coefficient substantially smaller
in magnitude that is statistically insignificant (see McCaig and Pavcnik (2018) Appendix Table A.1,
Panel B, columns 1 and 2). They obtain a similar finding for growth of exports to the E.U. between
1997 and 2000 (see Appendix Table A.1, Panel B, columns 3 and 4).8 Thus, the export growth to the
U.S. following the BTA is not simply the continuation of pre-existing trends. In addition, McCaig and
Pavcnik (2018) regressed the change in U.S. tariffs on a measure of the unskilled labor intensity of
an industry (measured by the share of workers that completed grade 9 or less) and the share of
workers within the industry working in household businesses prior to the implementation of the
BTA. Across traded, all, and manufacturing industries they find partial correlations of 0.155, -0.120,
and 0.030 for the share of unskilled labor and 0.207, 0.047, and 0.056 for the share of informal
8 A similar regression for worldwide exports between 1997 and 2000 also yields statistically insignificant findings.
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workers. None of the correlations are statistically significant. Overall, neither contemporaneous
growth in demand for Vietnamese exports from other high-income countries, nor pre-existing
trends in industry exports, nor baseline industry characteristics are statistically correlated with the
BTA-induced industry tariff changes.
3. Conceptual Framework
In this section, we first discuss the empirical definition of a microenterprise in Vietnam and how this
definition relates to others used in the literature. We then discuss the channels through which
international trade could affect performance of microenterprises.
3.1. What is a microenterprise in Vietnam
Our definition of a microenterprise is based on a registration status of a firm. This is a
common practice in development economics (La Porta and Shleifer (2008, 2014), Nataraj (2011),
Ulyssea (2018)). Vietnamese law distinguishes whether a firm is a household business or an
enterprise. In Vietnam all state, foreign and collective businesses are legally required to register as
enterprises under Vietnam’s Enterprise Law.9 However, private businesses can legally operate as a
household business or a private enterprise.10 Thus, any private business which is not registered as
an enterprise is, broadly speaking, considered to be a household business. This is our definition of a
microenterprise.
Rules describing in which of the modes the business should be operating are at times vague.
However, businesses that regularly employ workers, employ more than 10 workers, or operate in
more than one location are consistently required to register.11 Thus, while small, single-location
businesses may operate as household businesses or enterprises, all larger businesses are required
to operate as enterprises. The average household business in manufacturing has only 1.5 workers
(including the owner), well below the enterprise employment threshold, and being a household
business does not imply that a business operates illegally. Household businesses can operate in the
9 During our study period, the relevant version of the Enterprise Law is the Law on Enterprises passed in 1999. 10 See Decree No. 02/2000/ND-CP and Decree No. 109/2004/ND-CP. 11 Decrees No. 02/2000/ND-CP of 3 February 2000 and No. 109/2004/ND-CP of 2 April describe household business and enterprise registration requirements during our study period, with the first decree focusing on regular employment and the second on the 10 worker threshold.
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physical premise of a household (or farm), market stalls, industrial zones, trade centers, and in
variable locations (e.g., street vendors).
What are the benefits and costs of a firm being an enterprise as opposed to a household
business? Enterprises, relative to household businesses, have easier access to export licenses,
customs certificates, opportunities to bid on government contracts, the right to open branches and
to operate outside their home district (Malesky and Taussig (2009)). At the same time, running an
enterprise (as opposed to a household business) entails the registration cost and more rigorous
accounting. Taussig and Hang (2004) reports benefits of being an enterprise (relative to household
business) as greater ability to trade beyond home district, ability to expand, value added tax
receipts, legal ability to establish branch locations, a stamp for making transactions more official,
more predictable, law based interactions with government, ability to access equity for limited and
joint stock companies, and greater access to government investment incentives. Costs of
formalization include registration costs, annual registration fee, certified chief accountant, greater
reporting requirements, potential for increased attention from local authorities, and potential for
increased taxes with movement from lump sum to standard tax calculations. They also report that
many laws governing household businesses are the same as those for sole proprietorships, the
simplest form of a company.12
Importantly, our definition of microenterprise in Vietnam is based on a registration status of
a firm, which is a common practice in development economics (La Porta and Shleifer (2008, 2014),
Nataraj (2011), de Mel, McKenzie, and Woodruff (2013)). As a result, out definition is consistent
with other studies of microenterprises in the literature. Importantly, as we discuss in the data
section, our study is rare in as much that it relies on a nationally representative sample of
households (rather than focus on microenterprises in an industry or a small geographic area).
3.2 Performance of microenterprises and declines in export costs
We briefly discuss why tariff reductions on exports from a low-income country
(corresponding to the main trade policy change in the BTA) could affect the microenterprise
12 See CIEM, Assessment of the Strengths and Weaknesses of the Enterprise Law: Recommendations for Amendments and Additions (Draft), 2004, p. 62) for more details. The information on the costs of registering as a private enterprise in Vietnam is further summarized by the World Bank’s Doing Business Survey.
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performance within an industry. This discussion guides the empirical framework and analysis in
Section 5.
A reduction in tariffs on exports from a low-income country will increase product demand
and labor demand in the country. In order to understand the effects these lower tariffs have on
microenterprises, it is useful to first discuss the effects these tariffs in an economy-wide
perspective.
To begin with, reductions in trade costs influence the relative size of industries, as
emphasized in neoclassical trade models. In this particular case, one expects to observe greater
expansions of output and employment in industries with larger tariff cuts relative to industries
subject to smaller declines in trade frictions. In addition, the effects of tariff reductions could differ
across firms within an industry. If firms differ in underlying profitability due to heterogeneity in
marginal costs of production and face a fixed cost of exporting, the reduction in variable export
costs disproportionately raises the profitability of firms with a lower marginal cost of production
(Melitz (2003), Demidova and Rodriguez-Clare (2013)). Firm-specific marginal cost differences might
stem from differences in entrepreneurial ability of the owner/manager (Lucas (1978), Gollin (2008))
or underlying productivity (Melitz (2003)). Microenterprises differ from firms in the enterprise
sector in many dimensions and exhibit substantially lower productivity, owing in part to lower
education or managerial ability of owners and in part due to labor productivity differences (McCaig
and Pavcnik (2018)).13 In this setting, only initially more productive firms benefit from declines in
policy-induced variable export costs because only they earn high enough variable profits from
increased exports to cover the fixed cost of exporting. Declines in tariffs increase product and labor
demand (and profitability) among these more productive firms, while increasing the labor costs and
reducing the profitability of inefficient firms that only serve the domestic market. This is predicted
to shift the composition of market share and employment away from less productive employers
(such as microenterprises) toward more productive firms in the enterprise sector.14
13 McCaig and Pavcnik (2018) show that microenterprises have lower labor productivity than registered enterprises in Vietnam. See Gollin (2008), La Porta and Shleifer (2008, 2014), de Mel, McKenzie, and Woodruff (2013), and Nataraj (2011) for evidence from other countries. 14 Mrazova and Neary (forthcoming) show that the selection effects in Melitz style models are very robust to functional form assumptions and market structure, requiring supermodularity of the profit function in marginal production costs and market access costs (export).
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These models predict that within an industry, trade will expand the employment in initially
bigger, better performing firms and contract employment in initially less efficient firms. Recent
papers using firm-level data show that increased export market access is associated with a
reallocation of market share from less to more productive firms as well as increases in wage
inequality, quality upgrading and technology upgrading in formal urban manufacturing in middle-
income countries (Verhoogen (2008), Iacovone and Javorcik (2008), Bustos (2011)). These benefits
are particularly pronounced for initially more productive, larger firms.
However, these studies do not provide any guidance on the effects of exporting on
microenterprises because they are not observed in their setting. Indeed, McCaig and Pavcnik (2018)
find that labor reallocates toward the enterprise sector, providing direct evidence on the
importance of linkages between these two sectors. Their findings suggest that the probability that a
worker works in a household business (as opposed to a more formal employer) has declined in
response to export opportunities, so that the aggregate share of informal sector employment has
been shrinking in Vietnam in response to the BTA. These effects are most evident among younger
cohorts of workers and in provinces that are more integrated into international markets (as
measured by a province’s proximity to a major seaport).
The evidence in McCaig and Pavcnik (2018) suggests that export opportunities expand the
share of workers working for formal establishments. This appears to largely be happening because
of increasing demand for labor in the formal sector through expansion of existing, larger, formal
firms and the entry of new formal firms and not due to the most successful microenterprises
expanding and transitioning to the formal sector. The current paper provides further evidence on
this process by directly examining how microenterprises adjust their performance to changes in
export costs. Microenterprise performance is of direct interest given their contribution to
employment and household income in a low-income country setting.
Several caveats are worth keeping in mind for interpretation of empirical results. First, a
framework such as Melitz (2003) assumes product-market competition among the firms, implying,
in our context, that microenterprise products are imperfect substitutes for varieties produced by
firms in the enterprise sector, including exported varieties. This is clearly a strong assumption. In
fact, only 1% of household businesses report exporting and they view other non-state private
businesses as their main source of competition (Kokko and Sjoholm (2005)). Hence, the expansion
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of larger, more formal firms in response to increased foreign market access may not increase
product competition faced by household businesses.
Second, even if microenterprises and formal enterprises do not compete in product
markets, exporting could affect employment in microenterprises through the general equilibrium
effects of trade on labor demand. In fact, evidence from Vietnam suggests that exporting
opportunities from the BTA raise wages (McCaig (2011), Fukase (2013)). If microenterprises
compete for labor with firms in the enterprise sector, which disproportionately benefit from
declines in export costs (Melitz (2003)), the increased labor demand among firms in the enterprise
sector increases the opportunity cost of working for a household business, resulting in a relative
contraction of employment in microenterprises (see also Lucas (1978), Gollin (2008)).
A large number of household businesses do not employ outside labor, instead relying on
labor supplied by household members. For example, in Vietnam, only about 10 percent of
microenterprises hire outside labor. Schoar (2010) and Woodruff (2007) suggest that
microenterprises mainly employ household labor in most less developed countries, including
Mexico, Colombia, and Sri Lanka. As such, Melitz-style models, which assume perfectly competitive
labor markets and labor mobility, may not accurately depict the opportunity cost of labor for these
businesses. If the wage rate is not an accurate reflection of the opportunity cost of labor for the
business, the predictions of exit from these models may not apply in this context. Furthermore,
Schoar (2010) and Woodruff (2007) suggest that the existing literature finds that very few
microenterprises create new jobs in the economy through expansion of employment beyond
household members.
Of course, this discussion abstracts from frictions that might impede the mobility of
individuals from microenterprises to the enterprise sector. To the extent that such frictions exist,
they dampen the reallocation in response to declines in export costs, making it more difficult to
detect empirically reallocation across this margin of employment after tariff declines. Likewise,
firms might face different distortions across the two sectors (see Hsieh and Klenow (2009)). This
would lead to lower employment in a sector facing greater distortions than in Melitz (2003) without
distortions. Nonetheless, McCaig and Pavcnik (2018) find evidence consistent with reallocation of
workers toward more formal, productive establishments in response to declines in export costs.
Third, household businesses may operate as subcontractors for larger, more formal
businesses. In Hanoi and Ho Chi Ming City, over 90% of output from household businesses is sold
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either directly to households or to another household business or small enterprise (World Bank
(2010)), although sales to larger enterprises might account for about a quarter of output in
manufacturing household businesses (World Bank (2010)).15 About 10% of household businesses
report subcontracting relationships in 2002 (Kokko and Sjöholm (2005)). While these figures suggest
subcontracting might not play a large role for non-farm household businesses during our sample
period, some household businesses may indirectly benefit from increased demand for products
produced by large firms that benefit directly from the export opportunities.
The above discussion of the theoretical predictions on how expanded export opportunities
will affect performance of household businesses suggests that how informal household businesses
respond to export opportunities is an empirical question.
3. Data
In this section, we describe the two household surveys we use in our analysis, our
procedure for matching businesses across the two surveys, and the key business variables used in
the analysis. Lastly, we discuss the tariff data we match to the household surveys.
We use two nationally representative household surveys, the 2002 and 2004 Vietnam
Household Living Standard Surveys (VHLSS), which were conducted by the General Statistics Office
(GSO) of Vietnam. The surveys were conducted throughout 2002 and 2004 and feature a one-year
recall period, covering 2001/2002 and 2003/2004.16 These surveys cover rural and urban areas, and
contain a household and (thus individual)-level panel subsample that allows one to study individual
employment transitions and better control for unobserved business heterogeneity. Of the 74,350
15 This information is based on household businesses operating in Hanoi and Ho Chi Minh City as covered by the 2007 and 2009 Household Business and Informal Sector surveys conducted by the GSO. 16 The BTA was implemented on December 10, 2001. The 2002 survey interviewed households throughout the year. With a recall period of 12 months, individuals interviewed at the start of 2002 have a recall period that almost entirely precedes the BTA, while individuals interviewed at the end of 2002 have a recall period almost exclusively after the implementation of the BTA. Our results thus potentially underestimate the full impact of the BTA.
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and 45,928 households surveyed in 2002 and 2004 respectively, we can track 22,415 households
and their respective members between the two surveys (McCaig, 2009).17, 18
Each survey contains modules related to household demographics, education, health,
employment, income generating activities, and expenditures. We obtain information on
microenterprises from a detailed module on non-farm private businesses run by the household.
These include household businesses and private enterprises.19 Most of these businesses are not
covered in the more widely available firm-level data of registered firms in Vietnam.
The business module collects information on whether a household operates a business, the
industry in which the business operates, the number of months it operated during the past 12
months, the wage bill, revenue and expenditures, who is the most knowledgeable person (hereafter
referred to as the manager) and whether the business has a license. A household business can be
either licensed or unlicensed.20
Although the household surveys were not directly designed to track businesses over time,
we can do so taking advantage of information on the business that is not likely to change in a short
period. In particular, we use information on the industry of the business and the manager of the
business to match businesses between the 2002 and 2004 surveys. Unfortunately, the 2004 VHLSS
did not report the manager of the business and thus before we can match businesses over time we
17 The decline in the sample size between the 2002 and 2004 VHLSSs is primarily due to a reduction in the number of households surveyed within an enumeration area. The 2002 VHLSS surveyed households within 3,001 enumeration areas averaging approximately 25 households per enumeration area. The 2004 VHLSS surveyed 3,062 enumeration areas, but only 15 households per enumeration area. 18 The VHLSSs feature a rotating panel by enumeration area. Thus, not all enumerations areas surveyed in 2002 were intended to be resurveyed in 2004. This accounts for why the number of panel households is noticeably lower than the total number of households surveyed in the 2004 VHLSS, as only about half of the enumeration areas surveyed in 2004 were surveyed in 2002. 19 The business modules do not distinguish whether a business run by the household is a household business or a private enterprise. In 2004 we can use information on whether the business manager/owner reports working in the private sector (as opposed to the household business sector) to gauge the prevalence of businesses that are private enterprises. Only 1.5 percent of panel businesses could be considered private enterprises by this definition. As a result, we do not explore this margin further. 20 Most of the studies using the 1993 and 1998 Vietnam Living Standards Surveys and the 2002 and 2004 Vietnam Household Living Standards Surveys simply refer to the businesses included in the datasets as non-farm household enterprises (NFHE). In 1993 Vietnam did not distinguish between household businesses and private enterprises. This began sometime later, but the distinction did exist by the 1998 survey. Neither the 2002 nor 2004 survey distinguishes between household businesses and private enterprises. This is probably why researchers use the term non-farm household enterprise since it incorporates both types of businesses covered in the business modules. However, data from the 2006 VHLSS, which distinguishes between household businesses and private enterprises, suggest that even in 2006, a very small share of private businesses, 2.2%, are private enterprises.
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begin by predicting the manager of the business by matching information reported about the
business with information reported in the labor module about workers within the household. A full
description of the process is available in the Data Appendix. We test the procedure using the 2006
VHLSS, which contained the same business information as the 2004 VHLSS but also reported the
manager, and find that our procedure correctly predicts the manager for 92.4 percent of businesses
in the 2006 VHLSS.21 Thus, we feel very confident about our ability to accurately predict the
manager for businesses reported in the 2004 VHLSS. With information on the manager and industry
of operation in both 2002 and 2004, we construct a business panel by first matching businesses
over time within a household by industry and manager. Subsequently, among remaining businesses
we match by either manager or industry within the household. Full details of the procedure can be
found in the Data Appendix. We match 3,821 businesses by industry and manager, 1,272 businesses
by industry only, and 1,038 businesses by manager only leading to a panel of 6,131 businesses. This
represents 84.4 percent of all possible businesses that could be matched over time within panel
households.
We link the business and manager data to detailed information on U.S. tariffs on
Vietnamese exports in a given time period based on the business' industry affiliation. This detailed
tariff data has been collected and previously used by McCaig (2011) and McCaig and Pavcnik (2018).
4. Microenterprise characteristics
Microenterprises employ the majority of workers in low-income countries, but substantially
less is known about their performance relative to the performance of formal firms usually captured
in conventional firm-level data sources. We therefore examine basic microenterprise
characteristics, how they relate to performance, and compare these patterns to those observed for
more formal firms in the existing literature and to the patterns noted by the existing literature on
the topic reviewed above in less developed countries and in Vietnam.
In Table 2, we provide a summary of the number of households operating microenterprises
and the number of microenterprises. 37% of households own a business, with almost 80% of these
households owning only one business, and 19% of these households owning two businesses.
21 We did not use the 2002 VHLSS for testing the algorithm because it did not collect as much information about an individual’s secondary job as the 2004 and 2006 VHLSSs did. Since many businesses are run as a second job, testing the algorithm using the 2006 VHLSS is more appropriate.
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Households with more than two businesses are rare. In Table 3, we report summary statistics on
microenterprises. About 70% of businesses operate in services (i.e. tertiary activities), while
manufacturing accounts for the vast majority of the remaining microenterprises. Within
manufacturing, microenterprises are most common in food and beverage production, wood
processing, clothing and apparel, furniture manufacturing, and textiles. 20% of microenterprises
report having a business license and 11% hire outside labor. Microenterprises employ on average
only 1.7 employees and 0.3 paid workers.22 The low number of employees per microenterprise is
consistent with employment patterns in microenterprises from other less developed countries
surveyed in Woodruff (2007) and Schoar (2010).
A large literature on firms operating in the formal sector documents a high degree of
heterogeneity in underlying performance (see Melitz and Redding (2014) for a survey). These
studies do not capture microenterprises. Vietnamese household businesses tend to be smaller (as
measured by revenue or employment) and have lower labor productivity than firms in the
enterprise sector (McCaig and Pavcnik (2018)). Household businesses also exhibit a large degree of
heterogeneity in performance. Figure 4 plots the density of log revenues for household businesses
in 2002 and 2004 and shows large differences among microenterprises. This heterogeneity in
performance motivates the empirical strategy we employ in Section 5, where we explore
differential effects of export market opportunities on performance by household business size.
In addition to heterogeneity in revenue, microenterprises exhibit substantial heterogeneity
in holding a license and hiring workers, two business characteristics associated with more formal
interactions with government officials and labor markets. Table 4 divides microenterprises in 2002
into three size bins, based on whether their revenue lies in the bottom, middle, or the upper third
of the industry revenue distribution in 2002. Larger microenterprises are more likely to hold a
license (37% of large businesses hold a business license, while 6% of small businesses do) and hire
workers from outside of the household (23% of large businesses hire outside labor versus only 3%
of small household businesses). Figures 5 and 6 show nonparametrically that the probability that a
household business holds a business license or hires outside labor increases with revenue. Low-
revenue businesses are very unlikely to hold a business license or hire outside labor, but the
probability of holding a license (or hire outside labor) increases rapidly with household business
22 The information on the number of employed individuals is only available in 2004.
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size. Initially more successful household businesses that do not have a license are also more likely to
obtain a business license in the future. Figure 4 plots the relationship between obtaining a business
license between 2002 and 2004 and revenue in 2002 for household businesses without a business
license in 2002 and shows the positive relationship that is particularly steep for large businesses.
Similarly, Figure 5 plots the probability of hiring outside labor in 2004 versus initial revenue for
businesses that did not hire outside labor in 2002. The relationship is strongly positive, except
among the few businesses with initially high revenues.23 In sum, initially more successful
microenterprises display or eventually adapt more of the characteristics associated with firms in the
registered enterprise sector, but this is nonetheless relatively rare.
The microenterprise sector features large rates of entry and exit (Table 5).24 42 percent of
microenterprises exited between 2002 and 2004 and 42 percent of businesses operating in 2004
were new since 2002. These rates of entry and exit exceed the rates reported for formal firms
(Roberts and Tybout (1996)). High rates of entry and exit of Vietnamese household businesses are
also consistent with evidence in Vijverberg et al. (2006), World Bank (2010) and McCaig and Pavcnik
(2017). Firm exit is highly correlated with firm performance. Exit rates are substantially higher for
smaller firms than for larger firms. Figure 9 plots the propensity that a firm exits against revenue.
Like previous literature on formal firms, we find that the probability of exit declines with firm
revenue. Low-revenue firms face a high probability of exit, which diminishes with size. There is a
slight increase in the probability of exit for the largest firms (followed by a decline).25 Our evidence
is consistent with World Bank (2010) and McKenzie and Paffhausen (forthcoming), which finds that
initially better performing microenterprises and older businesses are less likely to exit.
5. Empirical Implementation
5.1 Business exit
We examine the effect of declines in U.S. tariffs on Vietnamese exports on the performance
of Vietnamese household businesses by linking industry-level tariffs to micro-level data on
23 Almost all microenterprises at such high level of revenue hire outside labor (see Figure 3), so the observed decline could simply reflect a low number of observations and measurement error at high levels of revenue. 24 Our procedure for defining panel businesses (described in the data appendix) is likely overly cautious. This implies that we somewhat overestimate entry and exit. 25 Very few microenterprises have revenue that exceeds 106 million dong so those results might be affected by measurement error.
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household businesses in Vietnam that spans the period of the U.S.-Vietnam BTA. We begin by
exploring whether business exit is related to the tariff reductions. To do so, we use the 2002
business data for panel households and construct an indicator variable for being a business that
exits. We then regress this indicator on the change in tariff within the industry according to the
following framework:
ij j ij ijy tariff X u (1)
where yij is an indicator variable for business i in industry j exiting between 2002 and 2004, jtariff
is the change in the tariff in industry j due to the BTA, and Xij is a vector of business control variables
(an indicator for whether a the business is in an urban area, the gender, age, and education of the
manager, an indicator for whether a manager is an ethnic minority, and province fixed effects). We
perform these regressions for all managers and then separately for female and male managers
given the literature on the existence on performance differences between female and male-owned
businesses.
We report the results in Table 6. We provided separate results for three sets of industries:
traded industries (excluding agriculture, forestry, and aquaculture as the business module covers
non-farm businesses), traded manufacturing, and all industries (we assign a tariff change of 0 to
non-traded industries). On average, within traded industries there is little relationship between the
size of U.S. tariff cuts and the probability of exit. This is the case for all managers, female managers,
and male managers. However, within manufacturing there is evidence of an increase in the
probability of exiting in response to the tariff reductions, particularly for businesses run by males.
The average tariff reduction, of 30.4 percentage points, is associated with an 8.1 percentage point
increase in the probability of exit for manufacturing businesses run by males. The aggregate exit
rates for male-run manufacturing businesses was 36 percent. For all industries, where the tariff
change has been set to 0 for businesses in non-traded industries, the results suggest that exit is
higher in response to larger tariff reductions for female-run businesses. This is largely due to a
lower exit rate among female-run retail businesses than for most traded industries.
The models in Section 3 suggest that the tariff cuts should affect firms differentially
depending on their initial performance. We expand the baseline specification to consider whether
there are differential effects of new export opportunities (as measured by U.S. tariff cuts) on
microenterprise exit depending on their initial size, as Melitz (2003) would predict. We augment the
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specification in (1) to allow for the effect of tariffs to differ across initially small, medium, and large
household businesses in a method similar to Bustos (2011):
3 3
2 2
r r r r
ij j ij j ij ij ij
r r
y tariff D tariff D X u
(2)
where is an indicator for whether a firm is in the bottom third (small), middle (medium), or
upper third (large) of the 2002 firm revenue distribution within an industry. The interaction terms
allow for differential effects within an industry and correspondingly and measure the effect
of tariffs on medium and large businesses, respectively, relative to small businesses. Thus, a positive
value for , for example, implies a decrease in the probability of exit for large microenterprises
relative to small microenterprises in response to the U.S. tariff reductions. The overall effect for
large businesses would then be 3 . In addition, the specification controls for potential
differential exit across small, medium, and large household businesses by the inclusion of indicators
for the initial microenterprise size.
We use three different specifications based on heterogeneity in initial size. Within an
industry, we divide firms into three equal sized bins of small, medium, and large firms based on
initial revenue and separately based on initial expenses. As both revenue and expenses are likely
reported with error, our size bins will have non-classical measurement error that will lead to
attenuation bias (Pischke, 2007). Our third specification uses the expense based size bins as
instrumental variables for the revenue based size bins. The IV estimator is not consistent in this
context, but its properties are such that the OLS and IV results can bound the true coefficient
(Pischke, 2007).
We report the results for female and male managers combined in Table 7a. For traded
industries, we find little evidence of differential exit rates by size in response to the tariff
reductions. Within manufacturing, we find evidence that large businesses are more likely to exit in
response to tariff reductions than small and medium businesses when size is based on initial
revenue. The estimate suggests that exit was 7 percentage points higher in initially large
microenterprises than in initially small microenterprises in response to the average manufacturing
tariff reduction. However, the magnitudes of the estimates are much smaller using expense based
size bins and the IV approach and are not statistically different from 0. Across all industries, we find
some evidence suggestive of exit being less likely among initially large businesses relative to initially
r
iD
2 3
3
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small businesses. The differential pattern is more noticeable using expense-based size definition
than for the revenue-based size definition.
Again, we see signs of important differences across female and male managers in terms of
exit (Tables 7b and 7c). Based on businesses in manufacturing, small, female-run businesses are less
likely to exit in response to tariff reductions whereas small, male-run businesses are more likely to
exit. For female-run manufacturing businesses, they become more likely to exit in response to the
tariff reductions as the business gets larger whereas male-run businesses are less likely to exit as
the business increases in size, particularly for medium sized businesses.26
Very few existing studies on microenterprises examine exit as an outcome variable,
especially relating it to plausibly exogenous variation to demand shocks (see McKenzie and
Pauffhausen (forthcoming) for discussion of exit in this literature). The above results are thus
informative about market-level factors (in our case, changes in product demand induced by changes
in trade policy) in influencing microenterprise exit. Moreover, the differential effects of tariff
reductions on exit by manager gender and initial size of the business imply that the sample of
surviving firms will differ based on the gender and initial performance of the business. This will have
implications for how to interpret evidence of whether the tariff reductions influenced firm growth.
However, before we turn to focusing on firm growth among surviving firms, we examine firm entry
in response to the tariff reductions.
26 In future, we will expand the exit analysis in three important ways. First, we will provide details on what the managers of exiting businesses are doing subsequent to closing the business. Using data from the 2004, 2006, and 2008 VHLSSs, McCaig and Pavcnik (2017) report that among former managers, 31% are self-employed in agriculture and 18% have left the household. Second, we will explore the sensitivity of our exit results to our business panel by aggregating over all businesses within a household and subsequently examining business exit at the household level. Third, using a special module in the 2004 VHLSS, we will provide some descriptive evidence on the reasons provided by managers as to why they closed their business. The most common reason given for closing a business is other activities creating more income.
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5.2 Entry
To empirically examine whether entry is influenced by the tariff reductions, we employ
equation (1) using the sample of businesses operated by panel households in 2004. The dependent
variable is an indicator variable for whether the business entered between 2002 and 2004 and the
change in tariff is based on the industry of operation in 2004.
Across traded and manufacturing industries, we see little evidence of entry in response to
the BTA tariff reductions (Table 8). The estimates are small in magnitude and statistically
insignificant for all managers as well as for female and male managers separately. For female
managers, we see some evidence of an entry response to tariffs for all industries (where non-traded
industries have been assigned a tariff change of 0). Together with the results for traded and
manufacturing, this implies lower entry rates in non-traded industries for female managers.
Together, the results for exit and entry suggest that industries that received larger tariff cuts
experienced net exit, but with different patterns of net exit between female and male managers.
Among male managers, initially smaller businesses were more likely to exit whereas for female
managers, initially smaller businesses were less likely to exit in response to the BTA tariff
reductions.
5.3 Business growth and transitions
Among surviving businesses, we relate outcome y of business i in industry j at time t to
industry tariffs using the following framework:
ijt jt i t ij ijty tariff D X u (3)
where yijt is the outcome (ln revenue, and indicators for hiring outside labor, having a license, being
the manager’s primary job, and operating for 12 months) and tariffjt is in tariff in industry j with the
Column 2 tariffs assigned to 2002 and the MFN tariffs assigned to 2004 survey year and industry is
based on the business’s initial industry. We include Xij, a vector of initial business characteristics,
which includes an indicator for the business being in an urban area, the gender, age, and education
of the manager, and an indicator for whether a manager is an ethnic minority, as well as province
fixed effects, interacted with a 2004 dummy, Dt. Lastly, we include business fixed effects. The
business fixed effects in equation (3) imply that all time invariant factors for business outcomes in
level have been controlled for. Furthermore, the inclusion of initial business characteristics and
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province fixed effects interacted with a 2004 dummy allow for differential changes over time in
business outcomes in relation to these characteristics.
We find evidence of revenue growth in response to the tariff reductions, but little evidence
of other changes for all managers, as reported in Table 9a. In manufacturing industries, the
coefficient is negative, large in magnitude, and statistically significant. A surviving business in an
industry that experienced the average tariff change of -0.304 experienced faster revenue growth of
8% compared to no tariff change. In contrast, the estimates for almost all other outcomes are small
and statistically insignificant. The differences across female and male managers (Tables 9b and 9c)
continue among surviving businesses. Revenue growth in response to the tariff reductions are
larger in manufacturing for male managers (-0.466 versus -0.128).
In addition to revenue, we consider two outcomes that are in general associated with steps
toward formalization—hiring outside labor and having a business license. Although licensed
household businesses are not registered enterprises (i.e., formal), obtaining a business license is
often viewed as a step toward greater formality for a firm. Indeed some earlier studies consider
only household business without a license as informal (Cling et al. (2010), p. 6, 2012).27
We also see differences in responses between male and female managers for hiring outside
labor and having a license. Female managers increased the prevalence of hiring outside labor. The
estimate in manufacturing suggests an increase of 2.6 percentage points in the incidence of hiring
outside labor in response to the average manufacturing tariff reduction. Although this may seem
small, recall that only about 10% of businesses report hiring outside workers. Female managers
27 Information on the costs of obtaining a business license is not readily available, but costs do not seem to be a significant barrier. Only a small percentage of microenterprises without a license consider the lack of license being related to expense or complicated nature of the licensing process (World Bank (2010)) and World Bank (2009)). Among those without a license, the vast majority reports they are not registered either because it is not compulsory or because they don’t know if they need to register (World Bank (2010)). A web site aimed at the business community (http://www.vietnam-briefing.com/news/vietnams-taxes-business.html/) suggests that the fee varies by monthly income of the business from 50,000 to 1,000,000 dong per year, but the site does not list the original source for this information nor the relevant period. Household businesses that hold a license report the main advantage of having a license as less corruption, followed by better access to market places, and easier loan access (World Bank (2010)). One possible explanation for not obtaining a business license is that a requirement of being licensed is to pay taxes. However, Cling et al. (2012) find that some unlicensed businesses report paying taxes and most household businesses also make additional payments to public officials. Therefore avoiding taxes by being unlicensed may not lead to an overall decrease in payments to government agencies. Despite imperfect adherence to the law obtaining a business license is considered as a first move toward formality (Cling et al. (2010, 2012)).
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decreased the likelihood of having a license and male managers increased the likelihood, although
the latter estimate is a similar magnitude but not precisely estimated.
Similar to the exit analysis, we expand the specification in equation (3) to consider whether
there are differential effects of new export opportunities (as measured by U.S. tariff cuts) on
business performance depending on their initial size:
3
2
r r
ijt jt i jt i t ij ijt
r
y tariff D tariff D X u
(4)
where is an indicator for whether a firm is in the bottom third (small), middle (medium), or
upper third (large) of the 2002 firm revenue distribution.28 Additionally, the vector of control
variables is expanded to included interactions between initial size and a 2004 dummy to control for
differentials changes across businesses of different sizes. For brevity, we focus on heterogeneous
results for ln revenue as the outcome. Tables for the other outcomes are reported in the appendix
(Tables B1 to B4).
We find strong evidence of differential responses in revenue based on initial size. We
display the results for all managers in Table 10a. As in previous tables, we report the results for
traded industries, manufacturing industries, and all industries. The tariffs are based on the initial
industry of operation, as is the sample inclusion into the three industry samples. Across traded and
manufacturing industries, we consistently find statistically significant evidence of heterogeneous
responses in revenue to the U.S. tariff reductions. Small businesses experienced a greater decline in
revenue in industries with larger tariff cuts when size is based on initial revenue or initial expenses.
Medium sized and large businesses experienced faster revenue growth in response to the tariff
reductions than initially small businesses within their industry. The total effect for medium size
business is not statistically different from 0 using either initial revenue or initial expenses to define
the size. However, the total effect for large businesses is statistically different from 0 using initial
expenses to define the size. The average manufacturing tariff reduction (-0.304) is associated with a
26% reduction in revenue for initially small businesses and a 14% increase in revenue in initially
large businesses using the expense based size definition.
28 These indicators are based on the position of a household business in the industry’s revenue distribution in 2002. We also construct similar indicators based on initial expenses in 2002.
r
iD
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Finally, the magnitude of the coefficients is larger in traded and manufacturing industries,
which are more directly impacted by trade, than in the all industry sample that also includes
businesses in non-traded industries. A large existing literature has found evidence of the
importance of heterogeneity in responses of firms in the formal sector to export market
opportunities (Melitz and Redding (2014)). Our evidence suggests that heterogeneity in responses
to export market opportunities plays some role even among microenterprises. The increase in
revenue in industries with bigger tariff cuts found in the previous section is driven by revenue
growth in initially larger microenterprises, which corresponds to a reallocation of revenue from
small to larger firms within an industry. Initially small microenterprises are contracting revenue with
tariff cuts, while initially larger microenterprises appear to be growing relative to smaller
microenterprises.
By gender, we see strong evidence of heterogeneous responses by size for both female and
male managers (see Tables 10b and 10c). The results are very similar across female and male
managers when size is based on initial expenses. When sized is based on initial revenue, the
heterogeneity between small and large microenterprises is greater for females than for males.29
In Appendix Tables B1 through B4, we display regression results for the other business
outcomes (hiring outside labor, having a license, being the manager’s primary job, and operating for
12 months) by initial size and gender. We find evidence of female managers of medium and large
businesses becoming more likely to hire outside labor, female and male managers of medium
microenterprises being less likely to have a license, some evidence of small businesses being less
likely to be the manager’s primary job and of large businesses being more likely to be the manager’s
primary job, and some (imprecise) evidence of an increase in the likelihood of operating for 12
months among medium sized microenterprises. However, it should be noted that the results are
not always consistent across the revenue and expense based size definitions.
6. Discussion of results and conclusion
Using nationally representative surveys of microenterprises in Vietnam, we document large
differences in revenue across microenterprises in Vietnam and find that initially larger businesses
29 In future analysis, we will also explore whether the results are different between provinces that are close versus far away from major seaports, as in McCaig and Pavcnik (2018).
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are more likely to hire outside (i.e. non-household member) labor, hold a business license, and
survive. This underlying heterogeneity matters for how these businesses respond to expanded
export market opportunities induced by the U.S.-Vietnam Bilateral Trade Agreement.
Our results suggest that microenterprises exited in response to the tariff cuts, particularly
those run by males. However, the pattern of exit differs across female and male managers. Small
female-managed businesses were less likely to exit whereas small male-managed businesses were
more likely to exit and large female-managed businesses were more likely to exit in response to the
tariff reductions. The increased exit among larger female-run businesses may be indicative of these
managers experiencing the greatest increase in their outside opportunities as better educated
managers run larger businesses and better educated individuals are more likely to transition out of
the informal sector (McCaig and Pavcnik, 2015).
Among surviving microenterprises, the tariff reductions are associated with an expansion of
revenue, particularly among male managers. We also find some evidence that female managed
businesses are more likely to hire outside workers, but less likely to hold a license in response to
declines in tariff cuts. As for exit, the initial size of the business matters as revenue growth was
negative for initially smaller businesses and either less negative or positive for larger businesses.
These results highlight the importance of looking at heterogeneous effects of demand
shocks across microenterprises for understanding how the sector responds. At the same time, our
results also suggest that the changes in aggregate demand do not necessarily influence all examined
outcomes of microenterprises. Part of the lack of findings might be due to imprecise estimates even
though we are relying on a large, nationally representative sample of households, which is rare in
this literature (see McKenzie and Paffhausen (forthcoming) for a review of sample sizes in recent
RCT studies of microenterprises).
However, absence of formal firms in the analysis has to be taken into account when
interpreting the findings. In our analysis above, we, like existing literature on microenterprises,
focuses on the microenterprise sector in isolation from the rest of the economy. This is due to the
lack of surveys that simultaneously cover firm-level outcomes for both sectors. In addition, it might
be sensible to focus on the microenterprise sector on its own, to the extent that these firms tend to
operate in a more similar market environment than their formal counterparts. Detailed surveys of
microenterprises enable one to examine how these microenterprises adjust to aggregate demand
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shocks, which is important given their large contribution to household income in low-income
country settings.
Nonetheless, the focus on microenterprises alone has to be taken into account when
interpreting the findings. In particular, our evidence on expanding revenue and increased hiring of
outside labor in industries with larger tariff cuts might be at first surprising given that Melitz style
models would predict that these microenterprises should contract. However, one has to be careful
in interpreting our results. The identification of the effects of the BTA on microenterprise
performance is based on comparisons of performance of these businesses in industries that
received larger tariff cuts to those in industries with lower tariff cuts. Thus, our results suggest that
export market opportunities expand revenue and hiring of outside labor toward industries with
bigger tariff within the informal sector. However, we cannot rule out that household business
revenue and hiring of outside labor is declining in response to export opportunities relative to
formal firms within the industry. One could examine this claim more directly for revenue and exit by
using data that would simultaneously cover formal firms in the enterprise sector and household
businesses, but this is a topic for future work.
However, our results combined with evidence from McCaig and Pavcnik (2018) provide
insights on how export opportunities induce the reallocation of workers between household
businesses and employers in the formal sector in low-wage countries. Evidence in McCaig and
Pavcnik (2018), which is based on labor force data from the VHLSSs, which is representative of
employment in household businesses and the enterprise sector, clearly shows that the share of
workers working for household businesses in an industry declines in response to tariff cuts. Thus,
for the case of labor, export market opportunities are expanding employment among the formal
enterprises more than among the household businesses. These effects were particularly
pronounced for younger workers and for workers in provinces proximate to major seaports. While
the evidence in the current paper suggests that microenterprises in industries with larger tariff cuts
are more likely to hire outside labor and increase revenue, the evidence from McCaig and Pavcnik
(2018) suggest that new export opportunities increased employment opportunities in the formal
sector proportionally more.
Overall, this evidence is in line with La Porta and Shleifer (2008) who show that the level of
informality in an economy generally declines with economic development through the growth of
Page 27 of 78
existing formal firms and the decline of informal firms rather than formalization of firms in the
informal sector. 30
30 McCaig and Pavcnik (2018) note that worker switching from working for a household business to working for an employer in the formal sector often coincides with a change in industry affiliation. In addition, entrants into the labor force are more likely to begin working for a formal employer, while those that exit the labor force are more likely to have previously worked for a household business. All these facts are inconsistent with the aggregate share of informal workers declining due to formalization of previously unregistered household businesses.
Page 28 of 78
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Appendix A: Data
In this appendix, we describe in detail two data preparation steps. First, we describe how
we predict a manager for all businesses in the 2004 VHLSS. Unlike the 2002 VHLSS, respondents in
2004 were not asked to identify the most knowledgeable individual for the business (hereafter
referred to as the manager for brevity). Knowing the manager of the business in 2004 has three
advantages: (1) in the employment module the individual reports whether they were self-employed
in an enterprise or self-employed in a household business and thus we can use information from
the employment module to identify whether a business is a household business or a private
enterprise; (2) in the employment module the individual also reports how long they have been
doing the job and thus we can infer a possible year of start for the business; and (3) it provides
additional information for the business which can be used to help create a panel at the business
level. To test the accuracy of the manager prediction algorithm we also run it for the 2006 VHLSS
which contains the same individual and business information that we use for the 2004 VHLSS. The
algorithm correctly predicts the manager for 91.2% of businesses in the 2006 VHLSS.
Second, we explain how we match businesses between the 2002 and 2004 VHLSSs. The
surveys were not designed to directly create a panel of businesses. However, we use a combination
of information on the manager and the industry of operation of the business to match them over
time within a panel household. In total, we match 6,131 businesses out of a maximum possible
number of matches of 7,261.
A.1 Predicting the manager for businesses in the 2004 VHLSS
In this subsection, we provide a detailed description of the data available in the
employment and business modules of the 2004 VHLSS, the algorithm used for matching, a summary
of how the matches were made, and the percentage of successful predictions from using the same
algorithm on data from the 2006 VHLSS.
We combine data from the employment and business modules of the 2004 VHLSS that can
be matched. In particular, from the employment module we identify individuals that reported being
self-employed in a household business for either their primary or secondary job during the past
year. For these jobs, we use information on the industry, the number of months worked during the
past years, the number of days per month usually worked, and the number of years the individual
Page 35 of 78
has been doing the job. From the business module, we use information on the industry, the number
of months operating during the past year, the average number of days per month operating, and
the year the business started.31
In Table A1 we provide a summary of the matches by the step within the manager
prediction algorithm at which the match was made. The table is organized sequentially such that
the first step of the algorithm was to identify the manager for businesses in which only one
household member reported being self-employed in the industry of the business and then only
businesses without a predicted manager would proceed to the next row. The first step of the
algorithm matches an individual as the manager for the business for 70.5% of all businesses in the
2004 VHLSS. The corresponding rate of success using the 2006 VHLSS is 99.3%. Thus, for a large
share of businesses we have a very high degree of confidence in our predicted manager. Next, we
identified a manager for any remaining businesses when there was only one household member for
whom the number of years in the job, the number of months worked in the past year, and the
number of days per month matched. And so on down the rows of the table.32 In sum, the algorithm
correctly identified the manager for 92.4% of businesses in the 2006 VHLSS. Thus, our manager
prediction algorithm is doing a very good job of identifying the manager of the business.33
A.2 Matching businesses between the 2002 and 2004 VHLSSs
Not all businesses run by a panel household should be matched over time. For example, any
household that reports running a different number of businesses across the two years has
experienced net entry or exit of businesses and thus at least one business within the household
31 The year the business started is only available for about 1/5th of the sample since this question was not asked of all businesses, but instead was part of an extra module on businesses that only 1/5th of households were asked. 32 Note that the percentage of successfully identified managers in the 2006 VHLSS for “Only household member with matching months and days per month” is likely an underestimate of the rate for the 2004 VHLSS. This is because only about 1/5th of businesses in the 2004 VHLSS have information on the year when the business started whereas all businesses in the 2006 VHLSS have this information. Thus some 2004 businesses for which the year was not reported, but the number of years, months, and days all matched would only be matched in the row “Only household member with matching months and days per month”. Indeed, in the 2006 VHLSS 11.3% of businesses are matched in the step “Only household member with matching years, months, and days per month” as compared to only 1.8% in the 2004 VHLSS and 3.2% of 2006 VHLSS businesses were matched to a manager in the step “Only household member with matching months and days per month” as compared to 9.5% in the 2004 VHLSS. 33 Our algorithm does not predict a manager for 595 out of 21,458 (2.8 percent) businesses. This could be due to the business being managed by an individual as their third job, which our algorithm currently does not include, or due to measurement error either in the industry of the business or the industry of the job.
Page 36 of 78
should not be matched. Thus, for any given the household the maximum number of matched
businesses is the minimum of the number of businesses run in either year. Table A2 summarizes the
number of businesses run by panel households in 2002 and 2004. There are 22,415 panel
households in our dataset. A little over half of the households did not operate a business in 2002 or
2004. The number of businesses that can potentially be matched is 7261.34
The most valuable information that we have for matching businesses over time is the
manager and the industry of operation. We begin by matching businesses within a household by
industry-manager and find 3,821 matches. These represent businesses that have a unique industry-
manager combination within the household in both years and the combination existed in both years
(e.g., the same manager operated a business in the same industry in both years and did not manage
any other businesses in the same industry in either year). Note that this will include instances in
which a manager closed one business and opened a new business in the same industry, but 97.2
percent or predicted managers in 2004 report doing the job for at least 2 years, suggesting that
most of these businesses are indeed continuing businesses.
Next, among the remaining businesses we relax the matching criteria to be (1) matched just
by manager, which allows for industry switching and (2) matched just by industry, which allows for
the manager within the household to change. Table A.3 summarizes the outcomes from all three
steps for matching businesses.
34 This is derived by summing over min(i,j)*aij where i represents the number of businesses run by the household in 2002, j is the number of businesses run by the household in 2004, and aij is the number of households operating i businesses in 2002 and j businesses in 2004.
Page 37 of 78
Figure 1: Value of Vietnamese exports to the U.S., 1997 to 2006
Notes: Authors' calculations from COMTRADE.
Page 38 of 78
Figure 2: Share of the United States in Vietnam's Exports
Notes: Authors' calculations from COMTRADE.
Page 39 of 78
Figure 3: Growth of Vietnamese exports to the US versus US tariff cuts by industry
Page 40 of 78
Figure 4: Density of ln revenue for 2002 and 2004
Notes: All values are expressed in 2004 prices. The sample includes all businesses in the 2002 and
2004 cross sections.
Page 41 of 78
Figure 5: Probability that a business holds a business license versus revenue
Notes: All values are expressed in 2004 prices. The sample includes all businesses in the 2002 cross
section.
Page 42 of 78
Figure 6: Probability that a business hires outside labor versus revenue
Notes: All values are expressed in 2004 prices. The sample includes all businesses in the 2002 and
2004 cross sections which are pooled together.
0.2
.4.6
.81
Pro
pe
nsity to
hire
outs
ide la
bo
r
10^2 10^3 10^4 10^5 10^6 10^7Real revenue (thousands dong)
Page 43 of 78
Figure 7: Probability that a business obtains a license between 2002 and 2004 versus revenue in
2002
Notes: All values are expressed in 2004 prices. The sample includes all panel businesses that did not
have a license in 2002.
0.1
.2.3
.4
Pro
pe
nsity to
obta
in a
lic
en
se b
etw
ee
n 2
002
and
200
4
10^2 10^3 10^4 10^5 10^6Real revenue in 2002 (thousands dong)
Page 44 of 78
Figure 8: Probability that a business hires outside labor in 2004 versus revenue in 2002 for
businesses that did not hire labor in 2002
Notes: All values are expressed in 2004 prices. The sample includes all panel businesses that did not
hire outside labor in 2002.
0
.05
.1.1
5.2
Pro
pe
nsity to
hire
outs
ide la
bo
r in
20
04
10^2 10^3 10^4 10^5 10^6Real revenue in 2002 (thousands dong)
Page 45 of 78
Figure 9: Probability that a business exits between 2002 and 2004 versus revenue in 2002
Notes: All values are expressed in 2004 prices. The sample includes all businesses operated by panel
households in 2002.
0.2
.4.6
.8
Pro
pe
nsity to
exit b
etw
een
200
2 a
nd 2
004
10^2 10^3 10^4 10^5 10^6Real revenue (thousands dong)
Page 46 of 78
Figure 10: Mean revenue in 2004 by age of business
Notes: All values are expressed in 2004 prices. The sample includes all 2004 businesses operated by
households that were asked the extended business module of the 2004 VHLSS, which is
approximately 1/5th of all households in the cross section.
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Table 1: Summary of U.S. tariffs applied to imports from Vietnam
IndustryNumber of industries
Mean pre-BTA tariff
(Column 2)
Mean post-BTA tariff
(MFN)
Mean change in
tariff
Standard deviation of tariff change
Traded industries 34 0.234 0.025 -0.209 0.179All industries 60 0.133 0.014 -0.119 0.170Manufacturing 22 0.338 0.036 -0.302 0.153Notes: The tariffs reported are simple averages across the indicated set of industries. Non-traded industries, which are included in "All industries" have been assigned a tariff of 0 both before and after the BTA.
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Table 2: Number of households operating businesses2002 2004
Number of households 74,350 45,928Number of households operating businesses 27,815 17,293
1 business 21,740 13,6842 businesses 5,308 3,1203 businesses 665 4224 businesses 102 67
Number of businesses 34,759 21,458Notes: These results are based on the repeated cross sections of the 2002 and 2004 Vietnam Household Living Standards Surveys
Page 49 of 78
Table 3: Microenterprise summary statistics
Mean St. Dev. Mean St. Dev.Indicator for primary industry 0.015 0.121 0.009 0.092Indicator for secondary industry 0.286 0.452 0.285 0.451Indicator for tertiary industry 0.699 0.459 0.707 0.455Indicator for urban 0.334 0.471 0.334 0.472Household size 4.751 1.761 4.682 1.717Manager characteristics
Female 0.571 0.495 0.583 0.493Head of household 0.449 0.497 0.427 0.495Age 15-24 0.083 0.276 0.072 0.259Age 25-34 0.279 0.449 0.236 0.424Age 35-44 0.345 0.475 0.354 0.478Age 45-54 0.184 0.387 0.221 0.415Age 55-64 0.069 0.253 0.073 0.261Age 65 and older 0.038 0.192 0.040 0.195Ethnic minority 0.070 0.256 0.078 0.268
Microenterprise characteristicsIndicator for business license 0.195 0.396 0.216 0.412Indicator for hiring outside labor 0.108 0.310 0.091 0.287Revenue 18855 122903 30231 283587Expenses 9755 81175 20008 277671Share of expenses on labor 0.032 0.118 0.028 0.113Number of workers 1.67 2.74Number of paid workers 0.32 2.19Age of business (years) 7.69 6.90
2002 2004
Note: Authors's calculations based on the repeacted cross sections of the 2002 and 2004 VHLSSs. Information on number of workers, paid workers, and age of business is not available in the 2002 VHLSS.
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Table 4: Summary statistics of key microenterprise characteristics based on size in 2002
Variable Mean # obs Mean # obs Mean # obs Mean # obsRevenue 18913 34743 2651 11643 8178 11624 46284 11476Indicator for having a license 0.19 34740 0.06 11642 0.15 11624 0.37 11474Indicator for hiring outside labor 0.11 33544 0.03 10991 0.06 11252 0.23 11301
Labor expenses 1102 33544 14 10991 117 11252 3142 11301Labor expenses conditional on being positive 10231 3614 510 307 1887 698 13608 2609
Large
Notes: Revenue and labor expenses are reported in 000s of dong in 2004 prices. Businesses are defined as small, medium, and large based on whether their revenue lies in the bottom, middle, or the upper third of the revenue distribution within their industry in 2002.
All Small Medium
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Table 5: Exit, entry and survival ratesYear Entry Surviving Exiting Total
2002 n.a. 6571 4034 106052004 3944 6571 n.a. 10515
2002 n.a. 0.62 0.38 1.002004 0.38 0.62 n.a. 1.00
Number of microenterprises
Share of microenterprises
Notes: The table is based on all businesses operated by panel households in the 2002 and 2004 VHLSSs.
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Table 6: Exit regression resultsDependent variable: Indicator for exiting between 2002 and 2004
(1) (2) (3)
Traded industriesManufacturing
industries All industries
-0.030 -0.173 -0.130**(0.096) (0.101) (0.055)
Observations 3,563 2,909 10,589R-squared 0.065 0.083 0.043
-0.032 -0.094 -0.220***(0.082) (0.099) (0.066)
Observations 1,807 1,568 6,107R-squared 0.095 0.106 0.057
-0.017 -0.268** 0.031(0.140) (0.104) (0.079)
Observations 1,756 1,341 4,482R-squared 0.067 0.092 0.043
All managersChange in industry tariff
Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The change in industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include province fixed effects and controls for business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, and an indicator for whether the manager is an ethnic minority).
Female managersChange in industry tariff
Male managersChange in industry tariff
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Table 7a: Exit heterogeneity regression results, female and male managersDependent variable: Indicator for exiting between 2002 and 2004
(1) (2) (3)Traded
industriesManufacturing
industries All industries
Change in industry tariff 0.073 0.041 -0.165(0.115) (0.141) (0.107)0.052 -0.000 0.019
(0.098) (0.094) (0.077)-0.091 -0.232** 0.077(0.122) (0.096) (0.114)
Observations 3,563 2,909 10,589R-squared 0.114 0.135 0.080
Change in industry tariff 0.059 -0.011 -0.231**(0.095) (0.123) (0.092)-0.048 -0.030 0.082(0.082) (0.079) (0.076)-0.007 -0.091 0.229*(0.096) (0.086) (0.118)
Observations 3,492 2,870 10,200R-squared 0.112 0.138 0.068
Change in industry tariff 0.075 -0.035 -0.214**(0.109) (0.106) (0.097)0.007 0.158 0.011
(0.189) (0.123) (0.172)0.028 -0.026 0.243**
(0.087) (0.071) (0.107)
Observations 3,492 2,870 10,200R-squared 0.109 0.133 0.072
Endogenous regressorIndustry tariff * medium 1187 3106 1653Industry tariff * large 2725 4669 22212004*medium 4576 6304 19522004*large 389.4 5778 826.1
Change in industry tariff * large
Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The change in industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include province fixed effects and controls for business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, and an indicator for whether the manager is an ethnic minority).
F-statistic of excluded instruments
Size based on initial revenue
Change in industry tariff * medium
Change in industry tariff * large
Size based on initial expenses
Change in industry tariff * medium
IV; size based on initial revenue
Change in industry tariff * medium
Change in industry tariff * large
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Table 7b: Exit heterogeneity regression results, female managersDependent variable: Indicator for exiting between 2002 and 2004
(1) (2) (3)Traded
industriesManufacturing
industries All industries
Change in industry tariff 0.176* 0.211* -0.211(0.095) (0.109) (0.135)-0.065 -0.144* -0.005(0.103) (0.071) (0.084)
-0.275** -0.392*** 0.001(0.122) (0.084) (0.095)
Observations 1,807 1,568 6,107R-squared 0.141 0.152 0.089
Change in industry tariff 0.163*** 0.141* -0.268***(0.056) (0.073) (0.099)
-0.170*** -0.153** 0.012(0.056) (0.055) (0.057)
-0.168** -0.210*** 0.156*(0.070) (0.055) (0.078)
Observations 1,760 1,541 5,866R-squared 0.140 0.154 0.076
Change in industry tariff 0.195*** 0.160*** -0.231**(0.062) (0.053) (0.109)-0.166 -0.076 -0.091(0.132) (0.111) (0.194)-0.111 -0.144** 0.192**(0.081) (0.065) (0.094)
Observations 1,760 1,541 5,866R-squared 0.141 0.156 0.083
Endogenous regressorIndustry tariff * medium 190 743.7 178.9Industry tariff * large 3949 4036 58872004*medium 6008 5272 43692004*large 194.1 3593 166.5
F-statistic of excluded instruments
Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The change in industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include province fixed effects and controls for business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, and an indicator for whether the manager is an ethnic minority).
Change in industry tariff * medium
Change in industry tariff * large
IV; size based on initial revenue
Change in industry tariff * medium
Change in industry tariff * large
Size based on initial revenue
Change in industry tariff * medium
Change in industry tariff * large
Size based on initial expenses
Page 55 of 78
Table 7c: Exit heterogeneity regression results, male managersDependent variable: Indicator for exiting between 2002 and 2004
(1) (2) (3)Traded
industriesManufacturing
industries All industries
Change in industry tariff -0.115 -0.253 -0.084(0.186) (0.160) (0.121)0.367** 0.360** 0.101(0.151) (0.156) (0.119)0.157 0.013 0.167
(0.142) (0.117) (0.126)
Observations 1,756 1,341 4,482R-squared 0.121 0.158 0.087
Change in industry tariff -0.162 -0.393** -0.152(0.193) (0.139) (0.130)0.260 0.415** 0.177
(0.203) (0.162) (0.119)0.299* 0.232* 0.310**(0.164) (0.128) (0.147)
Observations 1,732 1,329 4,334R-squared 0.120 0.163 0.080
Change in industry tariff -0.156 -0.476*** -0.113(0.268) (0.163) (0.147)0.385 0.787*** 0.047
(0.424) (0.289) (0.231)0.305 0.305* 0.266*
(0.207) (0.174) (0.157)
Observations 1,732 1,329 4,334R-squared 0.110 0.147 0.072
Endogenous regressorIndustry tariff * medium 841.5 1598 787.6Industry tariff * large 1625 1696 29432004*medium 1861 3131 43402004*large 108.3 629.3 292.4
IV; size based on initial revenue
Change in industry tariff * medium
Change in industry tariff * large
F-statistic of excluded instruments
Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The change in industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include province fixed effects and controls for business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, and an indicator for whether the manager is an ethnic minority).
Change in industry tariff * large
Size based on initial revenue
Change in industry tariff * medium
Change in industry tariff * large
Size based on initial expenses
Change in industry tariff * medium
Page 56 of 78
Table 8: Entry regression resultsDependent variable: Indicator for entering between 2002 and 2004
(1) (2) (3)
Traded industriesManufacturing
industries All industries
0.050 0.011 -0.094(0.061) (0.066) (0.072)
Observations 3,507 2,962 10,453R-squared 0.088 0.102 0.052
0.054 0.048 -0.199*(0.074) (0.086) (0.112)
Observations 1,942 1,712 6,167R-squared 0.113 0.130 0.070
0.058 -0.071 0.098(0.119) (0.113) (0.081)
Observations 1,565 1,250 4,286R-squared 0.074 0.088 0.052Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The change in industry tariff is based on the 2004 industry of the business as is the sample selection by industry. All regressions include province fixed effects and controls for business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, and an indicator for whether the manager is an ethnic minority).
All managersChange in industry tariff
Female managersChange in industry tariff
Male managersChange in industry tariff
Page 57 of 78
Table 9a: Business growth and transitions, all managers(1) (2) (3)
Traded industriesManufacturing
industries All industries
Dependent variable: ln(revenue)Industry tariff -0.231** -0.264** 0.162
(0.101) (0.106) (0.108)
Observations 3,984 3,354 13,062R-squared 0.871 0.876 0.849Dependent variable: indicator for hiring outside laborIndustry tariff -0.043 -0.040 -0.037
(0.046) (0.052) (0.030)
Observations 4,020 3,406 12,788R-squared 0.805 0.814 0.749Dependent variable: indicator for having a licenseIndustry tariff -0.012 0.018 0.054**
(0.045) (0.041) (0.023)
Observations 4,062 3,430 13,138R-squared 0.778 0.787 0.758Dependent variable: indicator for primary jobIndustry tariff 0.073 0.019 -0.041
(0.051) (0.037) (0.035)
Observations 4,044 3,416 13,112R-squared 0.781 0.782 0.751Dependent variable: indicator for operating 12 monthsIndustry tariff -0.060 -0.026 -0.154***
(0.057) (0.039) (0.047)
Observations 4,062 3,430 13,142R-squared 0.701 0.698 0.683Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include business fixed effects and initial business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, an indicator for whether the manager is an ethnic minority, and province) interacted with a 2004 dummy.
Page 58 of 78
Table 9b: Business growth and transitions, female managers(1) (2) (3)
Traded industriesManufacturing
industries All industries
Dependent variable: ln(revenue)Industry tariff -0.158 -0.128 0.223*
(0.138) (0.129) (0.122)
Observations 1,914 1,670 7,634R-squared 0.857 0.860 0.840Dependent variable: indicator for hiring outside laborIndustry tariff -0.085** -0.085** -0.034
(0.034) (0.034) (0.039)
Observations 1,920 1,686 7,432R-squared 0.749 0.755 0.706Dependent variable: indicator for having a licenseIndustry tariff 0.088*** 0.119*** 0.060***
(0.030) (0.021) (0.010)
Observations 1,950 1,706 7,668R-squared 0.767 0.766 0.753Dependent variable: indicator for primary jobIndustry tariff 0.091 0.041 -0.023
(0.063) (0.079) (0.030)
Observations 1,942 1,700 7,654R-squared 0.792 0.790 0.753Dependent variable: indicator for operating 12 monthsIndustry tariff -0.155* -0.069 -0.242***
(0.086) (0.071) (0.057)
Observations 1,950 1,706 7,670R-squared 0.700 0.693 0.681Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include business fixed effects and initial business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, an indicator for whether the manager is an ethnic minority, and province) interacted with a 2004 dummy.
Page 59 of 78
Table 9c: Business growth and transitions, male managers(1) (2) (3)
Traded industriesManufacturing
industries All industries
Dependent variable: ln(revenue)Industry tariff -0.423* -0.466* 0.013
(0.228) (0.259) (0.151)
Observations 2,070 1,684 5,428R-squared 0.881 0.886 0.856Dependent variable: indicator for hiring outside laborIndustry tariff -0.002 0.015 -0.054
(0.053) (0.072) (0.032)
Observations 2,100 1,720 5,356R-squared 0.833 0.842 0.777Dependent variable: indicator for having a licenseIndustry tariff -0.172* -0.143* 0.027
(0.089) (0.075) (0.057)
Observations 2,112 1,724 5,470R-squared 0.790 0.801 0.767Dependent variable: indicator for primary jobIndustry tariff 0.100 0.076 -0.066
(0.096) (0.109) (0.073)
Observations 2,102 1,716 5,458R-squared 0.783 0.788 0.751Dependent variable: indicator for operating 12 monthsIndustry tariff 0.066 0.066 -0.031
(0.074) (0.062) (0.045)
Observations 2,112 1,724 5,472R-squared 0.727 0.725 0.693Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include business fixed effects and initial business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, an indicator for whether the manager is an ethnic minority, and province) interacted with a 2004 dummy.
Page 60 of 78
Table 10a: Revenue and tariffs by business size, all managersDependent variable: ln(revenue)
(1) (2) (3)Traded
industriesManufacturing
industries All industries
Industry tariff 0.722*** 0.711*** 0.201(0.183) (0.150) (0.135)
-0.730*** -0.587** -0.095(0.233) (0.219) (0.219)
-1.001*** -0.884*** -0.158(0.319) (0.278) (0.189)
Observations 3,980 3,350 13,056R-squared 0.886 0.889 0.867
Industry tariff 0.718*** 0.842*** 0.117(0.235) (0.234) (0.170)
-0.800*** -0.916*** 0.015(0.199) (0.216) (0.254)
-1.231*** -1.304*** -0.083(0.293) (0.300) (0.338)
Observations 3,940 3,328 12,704R-squared 0.883 0.888 0.860Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include business fixed effects and initial business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, an indicator for whether the manager is an ethnic minority, and province) interacted with a 2004 dummy.
Industry tariff * medium
Industry tariff * large
Size based on initial revenue
Size based on initial expenses
Industry tariff * medium
Industry tariff * large
Page 61 of 78
Table 10b: Revenue and tariffs by business size, female managersDependent variable: ln(revenue)
(1) (2) (3)Traded
industriesManufacturing
industries All industries
Industry tariff 0.836*** 0.874*** 0.388***(0.203) (0.192) (0.082)
-0.600*** -0.446*** -0.260**(0.115) (0.080) (0.102)
-1.092*** -0.982** -0.201(0.377) (0.344) (0.210)
Observations 1,914 1,670 7,634R-squared 0.878 0.878 0.862
Industry tariff 0.792*** 0.804*** 0.176(0.212) (0.215) (0.127)
-0.683*** -0.658*** 0.046(0.213) (0.190) (0.193)
-1.215*** -1.158*** -0.114(0.154) (0.154) (0.327)
Observations 1,884 1,650 7,396R-squared 0.873 0.875 0.855
Industry tariff * medium
Industry tariff * large
Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include business fixed effects and initial business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, an indicator for whether the manager is an ethnic minority, and province) interacted with a 2004 dummy.
Size based on initial revenue
Industry tariff * medium
Industry tariff * large
Size based on initial expenses
Page 62 of 78
Table 10c: Revenue and tariffs by business size, male managersDependent variable: ln(revenue)
(1) (2) (3)Traded
industriesManufacturing
industries All industries
Industry tariff 0.261 0.244 -0.213(0.347) (0.367) (0.226)-0.535 -0.383 0.247(0.541) (0.597) (0.359)-0.625 -0.530 0.086(0.499) (0.502) (0.288)
Observations 2,070 1,684 5,428R-squared 0.893 0.897 0.870
Industry tariff 0.512 0.953** -0.137(0.413) (0.405) (0.300)
-0.934** -1.352** 0.050(0.446) (0.508) (0.440)
-1.164** -1.515** 0.116(0.531) (0.562) (0.418)
Observations 2,060 1,682 5,314R-squared 0.890 0.896 0.864
Industry tariff * medium
Industry tariff * large
Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include business fixed effects and initial business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, an indicator for whether the manager is an ethnic minority, and province) interacted with a 2004 dummy.
Size based on initial revenue
Industry tariff * medium
Industry tariff * large
Size based on initial expenses
Page 63 of 78
Table A1 - Summary of how the manager was predicted for 2004 businesses
How manager prediction was made
# of businesses
in 2004
share of businesses
in 2004
Share of correct
predictions in 2006
Only household member matched by industry to the business
14701 0.705 0.993
Only household member with matching years, months, and days per month 384 0.018 0.918
Only household member matched by industry to the business 31 0.001 0.912
Only household member with matching months and days per month 1979 0.095 0.802
Only household member matched by industry to the business 44 0.002 0.833
Only household member with matching months 250 0.012 0.749Only household member matched by industry to the business 4 0.000 0.667
Worked most years out of matched household members 1026 0.049 0.751Worked most days out of matched household members 307 0.015 0.663Worked most hours per day out of matched household members 556 0.027 0.685
Only head or spouse working in the business 175 0.008 0.852Head working in the business 1108 0.053 0.691Highest ranked child working in the business 278 0.013 0.710Highest ranked individual working in the business 16 0.001 0.875Highest ranked individual-job working in the business 4 0.000 0.000Total 20863 1.000 0.924
Page 64 of 78
Table A2 - Number of households by number of businesses run in 2002 and 2004
0 1 2 3 4 Total0 11801 1960 171 6 1 139391 1934 3932 645 74 7 65922 205 712 629 94 8 16483 12 53 102 32 6 2054 1 12 10 6 2 31
Total 13953 6669 1557 212 24 22415
Number of businesses operated by the household in 2004
Number of businesses operated by the household in 2002
Page 65 of 78
Table A3 - Number of businesses by method of matchingNumber of
businesses …Share of
businesses …… that can potentially be matched 7261 1.000… matched by industry and manager 3821 0.526… only matched by industry 1272 0.175… only matched by manager 1038 0.143… unmatched by industry or manager 1130 0.156
Page 66 of 78
Table B1a: Hiring outside labor regression results, all managersDependent variable: Indicator for hiring labor
(1) (2) (3)Traded
industriesManufacturing
industries All industries
Industry tariff 0.021 0.011 0.036(0.054) (0.059) (0.040)-0.089* -0.103* -0.072*(0.051) (0.058) (0.036)-0.078* -0.042 -0.130***(0.040) (0.027) (0.041)
Observations 4,020 3,406 12,788R-squared 0.806 0.814 0.750
Industry tariff -0.024 -0.074 -0.020(0.064) (0.053) (0.023)-0.042 -0.001 -0.016(0.111) (0.109) (0.063)0.012 0.105 -0.040
(0.125) (0.121) (0.069)
Observations 4,020 3,406 12,788R-squared 0.806 0.814 0.750Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include business fixed effects and initial business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, an indicator for whether the manager is an ethnic minority, and province) interacted with a 2004 dummy.
Industry tariff * medium
Industry tariff * large
Size based on initial revenue
Industry tariff * medium
Industry tariff * large
Size based on initial expenses
Page 67 of 78
Table B1b: Hiring outside labor regression results, female managersDependent variable: Indicator for hiring labor
(1) (2) (3)Traded
industriesManufacturing
industries All industries
Industry tariff -0.026 -0.004 0.002(0.030) (0.043) (0.039)-0.084 -0.143 -0.042(0.073) (0.088) (0.043)
-0.069*** -0.070** -0.063*(0.020) (0.025) (0.036)
Observations 1,920 1,686 7,432R-squared 0.750 0.756 0.706
Industry tariff -0.063** -0.048 -0.035(0.028) (0.038) (0.022)-0.025 -0.065 0.012(0.071) (0.082) (0.055)-0.002 -0.006 -0.018(0.119) (0.120) (0.077)
Observations 1,920 1,686 7,432R-squared 0.750 0.756 0.707Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include business fixed effects and initial business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, an indicator for whether the manager is an ethnic minority, and province) interacted with a 2004 dummy.
Size based on initial revenue
Industry tariff * medium
Industry tariff * large
Size based on initial expenses
Industry tariff * medium
Industry tariff * large
Page 68 of 78
Table B1c: Hiring outside labor regression results, male managersDependent variable: Indicator for hiring labor
(1) (2) (3)Traded
industriesManufacturing
industries All industries
Industry tariff 0.106 0.046 0.074(0.098) (0.089) (0.073)-0.118 -0.074 -0.110(0.122) (0.099) (0.121)-0.148 -0.030 -0.212***(0.116) (0.116) (0.076)
Observations 2,100 1,720 5,356R-squared 0.833 0.842 0.778
Industry tariff 0.042 -0.127 -0.012(0.174) (0.134) (0.074)-0.087 0.076 -0.044(0.232) (0.235) (0.110)-0.019 0.256 -0.066(0.276) (0.239) (0.148)
Observations 2,100 1,720 5,356R-squared 0.833 0.842 0.778Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include business fixed effects and initial business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, an indicator for whether the manager is an ethnic minority, and province) interacted with a 2004 dummy.
Size based on initial revenue
Industry tariff * medium
Industry tariff * large
Size based on initial expenses
Industry tariff * medium
Industry tariff * large
Page 69 of 78
Table B2a: License regression results, all managersDependent variable: Indicator for having a license
(1) (2) (3)Traded
industriesManufacturing
industries All industries
Industry tariff -0.041 -0.018 0.075**(0.060) (0.067) (0.029)
0.155*** 0.186*** -0.007(0.048) (0.053) (0.048)-0.016 -0.009 -0.065*(0.041) (0.058) (0.038)
Observations 4,062 3,430 13,138R-squared 0.779 0.788 0.759
Industry tariff 0.011 0.015 0.082**(0.092) (0.092) (0.040)0.092 0.129 -0.030
(0.092) (0.092) (0.049)-0.085 -0.047 -0.066(0.087) (0.093) (0.053)
Observations 4,020 3,406 12,784R-squared 0.781 0.789 0.761Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include business fixed effects and initial business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, an indicator for whether the manager is an ethnic minority, and province) interacted with a 2004 dummy.
Size based on initial revenue
Industry tariff * medium
Industry tariff * large
Size based on initial expenses
Industry tariff * medium
Industry tariff * large
Page 70 of 78
Table B2b: License regression results, female managersDependent variable: Indicator for having a license
(1) (2) (3)Traded
industriesManufacturing
industries All industries
Industry tariff 0.014 0.007 0.096***(0.053) (0.069) (0.030)
0.222*** 0.262*** -0.023(0.049) (0.042) (0.075)0.042 0.106 -0.083*
(0.082) (0.115) (0.045)
Observations 1,950 1,706 7,668R-squared 0.769 0.768 0.754
Industry tariff 0.117 0.091 0.100***(0.078) (0.100) (0.031)0.043 0.098 -0.051
(0.056) (0.062) (0.042)-0.050 0.031 -0.086(0.146) (0.151) (0.074)
Observations 1,920 1,686 7,430R-squared 0.772 0.769 0.757Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include business fixed effects and initial business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, an indicator for whether the manager is an ethnic minority, and province) interacted with a 2004 dummy.
Size based on initial revenue
Industry tariff * medium
Industry tariff * large
Size based on initial expenses
Industry tariff * medium
Industry tariff * large
Page 71 of 78
Table B2c: License regression results, male managersDependent variable: Indicator for having a license
(1) (2) (3)Traded
industriesManufacturing
industries All industries
Industry tariff -0.223* -0.169 0.018(0.116) (0.113) (0.085)0.165 0.230 0.047
(0.172) (0.173) (0.097)0.033 -0.033 -0.038
(0.098) (0.093) (0.085)
Observations 2,112 1,724 5,470R-squared 0.791 0.803 0.768
Industry tariff -0.263 -0.274 0.028(0.194) (0.181) (0.118)0.294 0.409* 0.009
(0.208) (0.195) (0.127)0.001 0.016 -0.032
(0.173) (0.158) (0.130)
Observations 2,100 1,720 5,354R-squared 0.793 0.804 0.770Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include business fixed effects and initial business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, an indicator for whether the manager is an ethnic minority, and province) interacted with a 2004 dummy.
Size based on initial revenue
Industry tariff * medium
Industry tariff * large
Size based on initial expenses
Industry tariff * medium
Industry tariff * large
Page 72 of 78
Table B3a: Primary job regression results, all managersDependent variable: Indicator for the business being the manager's primary job
(1) (2) (3)Traded
industriesManufacturing
industries All industries
Industry tariff 0.359*** 0.288*** 0.026(0.114) (0.091) (0.102)-0.168 -0.113 -0.107(0.130) (0.127) (0.089)
-0.470*** -0.426*** -0.096(0.154) (0.147) (0.139)
Observations 4,044 3,416 13,112R-squared 0.786 0.786 0.754
Industry tariff 0.210** 0.150* 0.065(0.095) (0.084) (0.064)-0.055 -0.023 -0.189**(0.117) (0.115) (0.074)
-0.259** -0.253** -0.142(0.114) (0.109) (0.086)
Observations 4,002 3,392 12,758R-squared 0.784 0.786 0.753Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include business fixed effects and initial business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, an indicator for whether the manager is an ethnic minority, and province) interacted with a 2004 dummy.
Size based on initial revenue
Industry tariff * medium
Industry tariff * large
Size based on initial expenses
Industry tariff * medium
Industry tariff * large
Page 73 of 78
Table B3b: Primary job regression results, female managersDependent variable: Indicator for the business being the manager's primary job
(1) (2) (3)Traded
industriesManufacturing
industries All industries
Industry tariff 0.311*** 0.223* -0.003(0.103) (0.121) (0.060)
-0.170** -0.126* -0.011(0.078) (0.067) (0.077)-0.307* -0.218 -0.051(0.176) (0.184) (0.126)
Observations 1,942 1,700 7,654R-squared 0.796 0.793 0.756
Industry tariff 0.139* 0.072 0.035(0.077) (0.099) (0.027)-0.035 -0.033 -0.140**(0.082) (0.058) (0.057)-0.071 -0.024 -0.086(0.122) (0.128) (0.088)
Observations 1,912 1,680 7,416R-squared 0.795 0.794 0.757Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include business fixed effects and initial business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, an indicator for whether the manager is an ethnic minority, and province) interacted with a 2004 dummy.
Size based on initial revenue
Industry tariff * medium
Industry tariff * large
Size based on initial expenses
Industry tariff * medium
Industry tariff * large
Page 74 of 78
Table B3c: Primary job regression results, male managersDependent variable: Indicator for the business being the manager's primary job
(1) (2) (3)Traded
industriesManufacturing
industries All industries
Industry tariff 0.615** 0.611* 0.128(0.296) (0.344) (0.204)-0.327 -0.208 -0.311(0.350) (0.379) (0.196)
-0.769** -0.834** -0.234(0.320) (0.371) (0.210)
Observations 2,102 1,716 5,458R-squared 0.790 0.796 0.757
Industry tariff 0.437 0.509 0.178(0.295) (0.357) (0.180)-0.156 -0.195 -0.354*(0.360) (0.417) (0.190)-0.582* -0.706* -0.283(0.297) (0.344) (0.174)
Observations 2,090 1,712 5,342R-squared 0.785 0.793 0.753Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include business fixed effects and initial business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, an indicator for whether the manager is an ethnic minority, and province) interacted with a 2004 dummy.
Size based on initial revenue
Industry tariff * medium
Industry tariff * large
Size based on initial expenses
Industry tariff * medium
Industry tariff * large
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Table B4a: Operating for 12 months regression results, all managersDependent variable: Indicator for operating for 12 months
(1) (2) (3)Traded
industriesManufacturing
industries All industries
Industry tariff 0.093 0.120 -0.074(0.080) (0.087) (0.053)
-0.330** -0.245** -0.164**(0.144) (0.108) (0.070)0.007 -0.011 -0.080
(0.102) (0.116) (0.067)
Observations 4,062 3,430 13,142R-squared 0.704 0.700 0.686
Industry tariff -0.007 0.038 -0.110**(0.056) (0.078) (0.047)-0.081 -0.068 -0.129**(0.144) (0.144) (0.056)0.002 -0.021 -0.027
(0.059) (0.053) (0.066)
Observations 4,020 3,406 12,788R-squared 0.700 0.699 0.683Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include business fixed effects and initial business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, an indicator for whether the manager is an ethnic minority, and province) interacted with a 2004 dummy.
Size based on initial revenue
Industry tariff * medium
Industry tariff * large
Size based on initial expenses
Industry tariff * medium
Industry tariff * large
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Table B4b: Operating for 12 months regression results, female managersDependent variable: Indicator for operating for 12 months
(1) (2) (3)Traded
industriesManufacturing
industries All industries
Industry tariff 0.060 0.052 -0.153**(0.136) (0.133) (0.057)-0.377* -0.226 -0.165*(0.200) (0.137) (0.086)-0.077 0.029 -0.081(0.167) (0.134) (0.066)
Observations 1,950 1,706 7,670R-squared 0.703 0.695 0.684
Industry tariff -0.029 -0.071 -0.203***(0.144) (0.142) (0.068)-0.072 0.124 -0.078(0.256) (0.131) (0.101)-0.154 -0.028 -0.058(0.194) (0.139) (0.079)
Observations 1,920 1,686 7,432R-squared 0.700 0.695 0.679Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include business fixed effects and initial business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, an indicator for whether the manager is an ethnic minority, and province) interacted with a 2004 dummy.
Size based on initial revenue
Industry tariff * medium
Industry tariff * large
Size based on initial expenses
Industry tariff * medium
Industry tariff * large
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Table B4c: Operating for 12 months regression results, male managersDependent variable: Indicator for operating for 12 months
(1) (2) (3)Traded
industriesManufacturing
industries All industries
Industry tariff 0.049 0.168 0.085(0.214) (0.177) (0.091)-0.153 -0.166 -0.189(0.245) (0.231) (0.156)0.201 0.005 -0.152
(0.309) (0.283) (0.165)
Observations 2,112 1,724 5,472R-squared 0.729 0.727 0.696
Industry tariff 0.027 0.181 0.093(0.208) (0.179) (0.111)-0.042 -0.189 -0.289*(0.285) (0.312) (0.172)0.151 -0.045 -0.082
(0.244) (0.203) (0.152)
Observations 2,100 1,720 5,356R-squared 0.726 0.725 0.695Notes: Robust standard errors in parentheses. Clustered by industry. *** p<0.01, ** p<0.05, * p<0.1. The industry tariff is based on the 2002 industry of the business as is the sample selection by industry. All regressions include business fixed effects and initial business characteristics (an indicator for whether a business is in an urban area, gender, age, and education of the manager, an indicator for whether the manager is an ethnic minority, and province) interacted with a 2004 dummy.
Size based on initial revenue
Industry tariff * medium
Industry tariff * large
Size based on initial expenses
Industry tariff * medium
Industry tariff * large
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