impacts of exported turkish soap operas and visa-free...
TRANSCRIPT
Impacts of Exported Turkish Soap Operas and
Visa-free Entry on Inbound Tourism to Turkey
January 24, 2013
Abstract
We examine the main determinants of the recent boost in the number of tourist inflows
to Turkey, focusing on the indirect marketing effect of the Turkish soap operas exported
abroad and recent changes in the Turkish government’s foreign policies. Applying a tradi-
tional tourist demand gravity model, we explore that the recent increase in the popularity
of the Turkish soap operas in the Middle East and Eastern Europe has boosted the number
of inbound tourists to Turkey from those countries, and as the number of hours of Turkish
soap operas aired in a particular country increases, the tourist flows from that country to
Turkey increase as well. We also consider the Turkish government’s recent bilateral agree-
ments with other countries to waive the visa requirements for ordinary foreign visitors, and
indicate that the termination of visa requirements has increased the tourist flows from those
countries to Turkey.
JEL Codes: F41, L83.
Keywords: Dynamic Panel, Film Tourism, Gravity Model, Turkish Soap Operas,
Tourist Inflows.
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1 Introduction
The visual media, i.e. TV shows and films, are the most important vehicles for attracting
people’s attention. Most of the world’s population have used visual media to entertain them-
selves and spend their leisure time. A wide number of studies focus on the importance of the
visual media on marketing purposes. Some of those studies focused on the role of the greater
extent of visual media for influencing international tourism demand (Butler, 1990; Urry, 1994;
Edensor, 2001; Kim and Richardson, 2003; Laing and Crouch, 2009; Croy, 2010; Kim, 2012;
Portegies, 2010). Among the visual media, TV shows and films have undeniable power for
influencing audiences. Riley et al., 1998; Beeton, 2005); Macionis and Sparks, 2009; and Mor-
due, 2009 have extensively studied, the media –TV shows and movies– on tourists’ motivation
for selecting destinations; the literature has called this“film/movie induced tourism”.
On August 30, 2008, eighty-five million Arab viewers were stuck to their TV sets for the
finale of the Arabian-dubbed Turkish soap opera named “Noor.”1 Later, in 2009, following
Noor ’s unbeatable success, another Turkish soap opera succeeded in attracting TV watchers
across the Middle East. Sixty-eight million Arabian TV viewers were sitting on their couch to
watch the finale of Sanawat al Dayaa (Buccanti, 2010)2. The Arabian watchers’ loyalty to the
Turkish soap operas is not confined to just sitting down and watching the soap operas: the
sales of t-shirts and posters of Noor even surpassed those featuring Arab leaders like Saddam
Hussein or Yasser Arafat (Khaleej Times, 2008). Giving another example of Turkish soap
operas’ successes abroad, in 2010, Slovakia’s leading private broadcaster operated by Central
European Media Enterprises (CEME) started airing, A Thousand and One Nights, which has
been breaking viewer rating records. The Slovakians are so obsessed with the characters of A
Thousand and One Nights that a Slovakian rock band named Kissuck featured a pair of models
of the main characters of this series on their music clips to attract people’s attention. These
examples truly show the success of the Turkish soap operas in foreign markets, and this success
is observed in record-breaking TV ratings as well as in how they influence foreign audiences’
preferences.
The Turkish soap opera industry, due to the competition among domestic TV channels in
1Noor is a Turkish melodrama originally broadcasted in Turkey as Gumus. The series became a pop-culturephenomenon when it was aired across the Arab world as Noor by the Middle Eastern Broadcast Company(MBC).
2Sanawat al Dayaa (The Lost Years) is another Turkish soap opera originally broadcasted in Turkey as Ihla-murlar Altinda. It was aired to Arab TV watchers by MBC.
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Turkey, has developed substantially in recent years. Turkish entrepreneurs have looked for the
possibility of exporting Turkish soap operas since 2001. A big jump in soap opera exports has
occurred since 2005. Now, Turkish soap operas are considered a growing export item under
Turkish export industry. According to the Turkish Statistical Institute, the value of Turkish
soap operas exported has reached to 100 million USD (United States dollars) in 2011, even
though this is a small amount relative to the total value of Turkey’s export, which is around 135
billion USD in 2011. This paper, however, does not study the impact of Turkish soap operas on
Turkish exports; rather, it emphasizes the role of the exported soap operas in affecting Turkey’s
international tourism demand. According to the latest World Tourism Organization (WTO)
statistics, Turkish inbound tourism growth has outstripped the European Union and global
averages, and the inflows have more than doubled since 2002. In this paper, we aim firstly to
relate the boost in the number of tourist inflows to the Turkish soap operas exported abroad.
A number of studies have investigated how the visual media influences audiences in terms of
tourism marketing purposes, both theoretically and empirically (Beeton, 2005; Kim et al., 2007;
Kim et al., 2009; Beeton, 2010; Kim, 2012). However, all these studies have investigated the
effect of certain TV shows on single market destinations. For instance, Kim et al. (2007) ex-
plored the effects of the Korean TV drama series named Winter Sonata on potential and actual
Japanese tourist flows to South Korea. In this study, they conducted a survey on Japanese
tourists and explored the effect of the Korean drama series broadcasted via Japanese TV chan-
nels on their choice of holiday destinations. In a different study, Kim et al. (2009) related tourist
inflows into Korea to the increase in Korean TV shows and soap operas, focusing on multiple
markets where Korean soap operas were exported. This study is limited in that it provides only
comparative statistics between the exported TV shows and tourist inflows, rather than building
a model to measure the impact of soap operas on inbound tourists.
Our paper has also been motivated by the recent changes in the Turkish government’s foreign
policies. Since 2006, the Turkish government has eliminated visa requirements for ordinary
foreign visitors from many countries from Central and Northern Africa, Central and East Asia,
the Middle East and Latin America. Even though visa-free entry is an important tool to increase
international tourism demand, there has been limited academic research into the effects of these
arrangements. Choong-Ki et al. (2010) has studied the effect of visa elimination in a paper
investigating the number of Korean tourists visiting Japan. They showed that visa elimination
favors the number of international tourist flows. Considering that the recent changes in Turkey’s
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visa policies have been effective for multiple countries, in this paper, we also investigate the
effect of visa-free entry on the tourist inflows to Turkey. We employ a gravity model to explore
the determinants of the tourist inflows from 81 different countries between 1995 and 2010.
International tourism is considered a form of international trade. Thus modelling bilateral
tourist flows would be similar to creating a gravity model, as in bilateral trade models. Apart
from conventional determinants of the gravity model, we employ the bilateral trade volumes
between the source countries and Turkey to capture the comparative advantage of transportation
costs between countries. Bilateral trade volume is widely used to measure the “extent” of
economic integration between countries; this variable also captures the ease of transportation
costs between two centers, thereby measuring if there is a comparative advantage between these
two destinations. More importantly, we test for the effect of the Turkish soap operas exported
to multiple markets on the tourist inflows to Turkey. Using the number of hours of soap operas
exported to different countries taken from Calinos Incorporation and the web–sites of national
broadcasting companies in the Middle East, Slovakia, Hungary and Russia for the years between
2001 and 2010, we are able to discuss the isolated effect of soap operas on inbound tourists.
Again, new to the literature, we control for the recent government policy changes in international
relations, i.e. the Turkish government’s bilateral agreements, mostly with the countries in the
Middle East, Central and Eastern Europe, East Asia, Central and North Africa, and Latin
America to waive the visa requirements for ordinary foreign citizens.
The remainder of this paper is organized as follows: Section 2 discusses the data and descrip-
tive statistics for the variables used in the paper. Section 3 presents the conventional gravity
model and its empirical results. Section 4 outlines the results for the dynamic panel model.
Section 5 concludes the paper.
2 Data and Descriptive Statistics
The data have been collected from different number of sources. In obtaining our dataset, we
employ 81 source countries for a period between 1995 and 2010. The tourist volumes between
Turkey and the source countries have been gathered from the Ministry of Culture and Tourism of
the Republic of Turkey (MCTRT). The bilateral trade volume data have been obtained from the
International Monetary Fund’s (IMF) Direction of Trade Statistics Database (DOTS). Popula-
tion and Gross Domestic Product (GDP) per capita (in USD) have been obtained from IMF’s
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International Financial Statistics (IFS) database. The relative Consumer Price Index (CPI)
variable, i.e. the CPI of Turkey adjusted to USD has also been collected from the IFS database.
The accommodation variable created by collecting the number of hotel rooms in Turkey has
been obtained from MCTRT. The binary variables –having a colonial relationship (COLONY),
sharing the same border (BORDER), sharing the same language (COMMON LANGUAGE), practis-
ing the same religion (RELIGION) and physical distance between the source country and Turkey
(DISTANCE)– have been obtained from Centre d’Etudes Prospectives et d’Informations Inter-
nationales (CEPII), an independent French institute for research into international economics.
The Turkish government has initiated bilateral visa agreements to waive the visa requirements
for ordinary visitors. To quantify this policy change, we create a binary time series variable,
which takes 1 if the ordinary citizens of the source country (i) has no visa requirements for
entering Turkey starting at time t and 0 otherwise. We obtain this information from the Resmi
Gazete, the official gazette of the Republic of Turkey.
Turkish soap operas have been exported by Turkish entrepreneurs since 2001. First, soap
operas were sold to Central Asian countries, including Kazakhstan and Uzbekistan, where coun-
tries share a common ethnic background with Turkey. Later, export of the Turkish soap operas
has been expanded to a wide range of countries including all Middle Eastern and North African
countries, Central Asian and a number of Eastern European countries: Bulgaria, Greece, Roma-
nia, Slovenia, Slovakia, Hungary, Ukraine, Moldova, Serbia, Macedonia, and Russia. To capture
the effect of the Turkish soap operas on inbound tourists, we created a variable, SOAP OPERA,
assigning the number of hours of Turkish soap operas exported to country (i). These data have
been gathered from many sources. We obtained most of these data from the Calinos Group of
companies, which exports nearly 80% of the Turkish soap operas on its own. We obtained the
rest of the data from different TV channels, including from MBC, a Saudi Arabia-based TV
broadcasting company, and other TV channels in Slovakia, Russia, Lebanon and Hungary.
Examining the dataset, one might raise the issue of the overlap of the countries that have
eliminated visa requirements with Turkey and import Turkish soap operas. However, the issue
is not clear–cut. For example, for some countries, for one or two years of observations (say 2007
and 2008), there was both a visa–waiving policy and soap operas were exported to that country,
but for the other years, overlapping does not exist. We are able to say that there are 22 countries
with a visa termination policy with Turkey and that imported soap operas (occurring at least
for one year of observation). The number of the countries with a visa termination policy but
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that did not import Turkish soap operas is 34 (at least one year’s observation), the number of
the countries without visa termination but which imported soap operas is 14 (at least one year’s
observation) and countries without visa termination and which did not import soap operas is
33 (at least one observation).3
Table 1 contains descriptive statistics for the variables used in this paper. We provide the
mean, the standard deviation (SD), the number of observations, minima and maxima for each
variables to check whether the variables used in the tables have been collected appropriately.
We obtain the pair–wise correlations of the variables between a range of –0.45 and 0.52 in our
sample. For the sake of brevity, we did not provide the pair–wise correlation table. Additionally,
we show the annual percentage change in tourist inflows to Turkey in Figure 1. It contains two
series: one is the annual percentage change in tourist inflows from the world; the other indicates
the annual percentage change in tourist flows from the countries Turkish soap operas have been
exported to. We intend to compare the growth of tourist inflows from the countries that
imported Turkish soap operas with the overall growth of tourist flows in Turkey. Particularly
after 2005, the white bars are higher than the black bars, indicating that the annual percentage
change of tourist inflows from the countries that imported Turkish soap operas are higher than
the total annual percentage change of tourist inflows to Turkey. In the paper, we claim that
exported soap operas might be one of the reasons for this difference.
3 The Static Panel Model
Tourism is widely considered to be a form of international trade. Thus, modelling bilateral
tourist flows would be similar to creating a gravity model for bilateral trade (Tinbergen, 1962
and Poyhonen, 1963) or bilateral financial asset flows (Lane and Milesi-Ferretti, 2008). In the
basic forms of the gravity model, the amount of flows (trade) between the source and destina-
tion countries is assumed to increase with their size (population, GDP per capita and market
capitalization are the variables used in the economic sense) and to decrease with the distance be-
tween the economic centers (distance and cost of transportation). Adding to the gravity model,
some studies (Witt and Witt, 1995; Eliat and Einav, 2004; Lane and Milesi-Ferretti, 2008; Balli
et al., 2011; Okowa and van Wincoop, 2012) have been successful in including some similarity
3Adding up all subsets gives a result higher than 81 (total number of the countries) since the export dataand visa termination for some countries takes both 0 and 1, and counted in different groups. Say, for the stateof Qatar, the bilateral visa termination was signed in 2010, the binary variable takes 0 before 2010 and takes 1after 2010, and thus Qatar is double counted.
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variables, such as a sharing the same border dummy, a having a colonial relationship dummy, a
common language dummy and common currency or common religion dummies. Following the
earlier literature, we use the following equation to model inbound tourist numbers:
TOURISTij,t = β0 + β1GDPi,t + β2TRADEij,t + β3POPULATIONi,t + β4ACCOMMODATIONj,t
+β5CPIj,t + β6VISAij,t + β7SOAP OPERAij,t−1 +Xij,t ∗ β + εij,t. (1)
The dependent variable, TOURISTij,t, is the natural logarithm of the tourist inflows from
country (i) to Turkey (j ) at time t . TRADEij,t is the trade value (exports + imports) between
Turkey (j ) and country (i) in USD. GDPi,t and POPULATIONi,t are the real GDP per capita and
population levels of source country (i) in logarithmic terms, respectively. ACCOMMODATIONj,t is
the accommodation (total number of the rooms in hotels in logarithms) available in Turkey at
time t, CPIj,t is the relative CPI of Turkey (j ) adjusted to USD. VISAij,t is a binary variable that
takes 1 if ordinary passport holders from country (i) are able to enter to Turkey without any
visa requirements and takes 0 otherwise. SOAP OPERAij,t−1 is simply the total number of the
hours of Turkish soap operas exported to country (i), at time t−1. We consider that Turkish
soap operas would not influence foreign audiences’ preferences instantaneously but we allowed
a one–year period for foreign visitors from country (i) to adjust their preferences in deciding
on foreign destinations to visit. Xij,t contains the bilateral variables that are widely used to
model bilateral trade, investment and immigration volumes such as the sharing the same border
dummy, the sharing the same language dummy and the practicing the same religion dummy.
We present the variables that are statistically significant in models. Apart from the variables
described above, we also control for different events including the so–called “one–minute” event
with a binary variable created for 2009 and afterwards. When the Turkish prime minister had
an argument with the President of Israel in Davos, Switzerland, this increased the popularity
of Turkey in the Middle East after 2009. We also employed another dummy for year 2007 and
afterwards: a dummy for the year of second selection of the governing party in Turkey, mostly
considered the beginning of the Turkish government facing towards the East instead of the
West.
After finding that all variables are stationary via the panel unit root test of Im et al. (2003),
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we record the regression results for Equation (1) in Table 2. We performed four different re-
gressions to test the baseline variables and to capture the effects of the visa-waiving agreements
and exported Turkish soap operas, separately and jointly. We used Jarque–Bera statistics for
testing the normality of the residuals and we fail to reject the normality of residuals, which is re-
ported in Table 2.4 In addition, we test for autocorrelation and heteroskedasticity in the models
and find evidence for both of them in our models; therefore, we present the heteroskedasticity
and autocorrelation corrected standard errors in the table. For all regressions, to overcome the
possible endogenity problem of a bilateral trade variable (consistent with previous studies), we
use the colonial relationship dummy as an instrumental variable.
The first column contains the regression analysis for the baseline variables. Consistent with
Witt and Witt (1995) and Lim (1997), sharing the same border and the same language have
highly significant and positive coefficients, although our estimate is on the lower side compared
to that of Witt and Witt (1995) and Lim (1997) for explaining the number of inbound tourists
to Turkey. The results suggest that a common language or geographical proximity may facilitate
an easier trip to Turkey. Apart from those variables, following Balli et al. (2011), the practising
the same religion variable also has a positive and significant effect (0.94 with a SD of 0.19),
confirming that cultural similarities (based on religion) play a significant role in attracting
more tourists to Turkey, particularly from Islamic countries. Istanbul, formerly the capital of the
Islam-dominated Ottoman Turks, contains the oldest and some of the most fascinating mosques,
and other respectable Islamic symbols and places. This has attracted many tourists from the
Islamic countries to visit those places, which would be the reason why the religion dummy is
highly significant. GDP and POPULATION variables also have solid and intuitive coefficients (0.31
and 0.21, SDs of 0.07 and 0.09, respectively) which suggest that the richer the source country
is, more tourists you expect to have from that country; the same applies for the population
variable (Chadee and Mieczkowski, 1987; Witt and Witt, 1995; Naudee and Saayman, 2005).
As far as relative prices in the destination are concerned, it is common in previous studies (Eilat
and Einav, 2004; Naudee and Saayman, 2005) to use the CPI of a destination country adjusted
by the USD as a proxy for relative tourism prices. This measure of relative prices captures
changes in the real exchange rate over time as well as cross–sectional variations in the cost of
travel. The coefficient of relative CPI (–0.31 with a SD of 0.06) shows that differences in the cost
of living matter to an extent and that tourists are sensitive to the price level in Turkey. Following
4The null hypothesis for the Jarque–Bera test is that the residuals are normally distributed.
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Lane and Milesi–Ferretti (2008), who explored the relationships between bilateral investment
flows and trade volumes between source and destination countries, we employ bilateral trade
volume as a solid determinant of the inbound tourist numbers, given that higher trade volumes
between two countries would create a comparative advantage in transaction costs. Apart from
Smith and Toms (1967) and Eilat and Einav (2004), the tourism literature has not explored
the direct relationship between trade volume and tourist inflows extensively. We show that the
coefficient of bilateral trade volume (1.20 with a SD of 0.26) is highly significant and positive
for all regressions, meaning that international tourists are more inclined to visit Turkey, as their
nation has more economic ties with Turkey. Our estimate for the bilateral trade variable is
more powerful compared to that of Eilat and Einav (2004), where they find mixed results on
the effect of bilateral trade on tourist flows.
Given that all baseline variables of column (1) have meaningful and significant coefficients
for explaining the determinants of tourist flows to Turkey, in the second column, we test if the
Turkish government’s recent visa-waiving agreements have boosted tourist inflows to Turkey.
The coefficient of the visa dummy is significant and positive (0.64 with a SD of 0.17), suggesting
an increase in the tourist flows from the countries where visa requirements have recently been
waived for regular citizens. The third column tests for the possible effect of exported Turkish
soap operas. We estimated a significant and positive coefficient (0.06 with a SD of 0.02),
meaning that exports of Turkish soap operas (in number of hours) have a positive marketing
effect for Turkish tourism.5 The adjusted R2 also increases from 0.69 to 0.75 when we add
the soap opera variable to the list of explanatory variables for tourists inflows to Turkey. The
last column shows the results for testing for the joint effect of the visa-waving policy and the
exported soap operas. It shows that both the coefficients of exported Turkish soap operas and
visa-waving policy dummy are jointly significant and effective in explaining the inbound tourist
numbers to Turkey. The result of the F -test for soap opera and visa-waving policy variables
strongly rejects the null hypothesis of these variables jointly being insignificant.
5Thanks to the anonymous referee, we control for the ethnic relationship of Turkey with its neighbouringcountries. For example, some Turkish citizens have relatives living on the neighbour countries. This mightaffect the estimations. Accordingly, we control for the border effect (Syria, Iraq and, to some extent, Bulgariaand Greece), by dropping these countries and rerunning the regressions. However, the results have not changedsubstantially.
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4 Dynamic Panel Data Model
There are two important issues in the panel data model. First, time-invariant country char-
acteristics (fixed effects), such as geography and demographics, may be correlated with the
explanatory variables. The fixed effects contained in the error term of Equation (1) consist of
the unobserved country-specific effects. Second, in the previous section, we omitted persistency
issues in international tourism demand. For instance, if you are a tourist, you may consider
visiting the same country next year, since you like the place a lot and/or you do not want to run
the risk of ruining your holiday by visiting an unknown place. This is called the “persistence
and reputation effect” (Naudee and Saayman, 2005).
Incorporating these dynamics into the previous model, the new model would be as follows:
TOURISTij,t = β0 + β1TOURISTij,t−1 + β2GDPi,t + β3TRADEij,t + β4POPULATIONi,t
+β5ACCOMMODATIONj,t + β6CPIj,t + β7VISAij,t + β8SOAP OPERAij,t−1 +Xij,t ∗ β + εij,t. (2)
Due to the inclusion of the TOURISTij,t−1 variable, a problem of endogeneity arises and
regular Ordinary Least Square (OLS) estimations provide biased results (Naudee and Saay-
man, 2005; Khadarooa and Seetanah, 2008). To overcome this problem, instrumental variables
(IVs) need to be used to overcome the endogeneity problem in dynamic models. The possi-
bility of having strong instruments for the TOURISTij,t−1 variable is low. In the case of having
weak instruments for the TOURISTij,t−1 variable, IV estimators are likely to be biased towards
the OLS. Accordingly, to cope with this problem, the difference Generalized Method of Mo-
ments (GMM) of Arellano-Bond (1991) estimator is widely used in the literature. The lagged
levels of the endogenous variable are included as instruments. This makes the endogenous
variables pre-determined and, therefore, they are not correlated with the error term.
In order to remedy the problem mentioned above, we use first–differences (first step) to
transform equation (2) into:
∆TOURISTij,t = β0 + β1∆TOURISTij,t−1 + β2∆GDPi,t + β3∆TRADEij,t + β4∆POPULATIONi,t
10
+β5∆ACCOMMODATIONj,t + β6∆CPIj,t + β7∆VISAij,t + β8∆SOAP OPERAij,t−1 + ∆εij,t. (3)
The left-hand side is the log difference in tourism flows from the source country (i) to
Turkey (j ) at period t.
Table 3 reports the first-step GMM estimator of Equation (3). We used Jarque–Bera statis-
tics for testing for the normality of the residuals and we fail to reject the normality of the resid-
uals. In addition, we test for the autocorrelation and heteroskedasticity of the models and find
evidence for heteroskedasticity. We have presented the heteroskedasticity–corrected standard
errors. In all three regressions, the first– and second–order correlation Arellano-Bond (AB) tests
have p–values greater than 10%, which means that there is not enough evidence to support that
there is autocorrelation. This finding validates the use of suitably lagged endogenous variables
as instruments. Additionally, the p–values of the Sargan test of over–identifying restrictions
fails to reject the null hypothesis that the instruments are exogenous in any specification.
The main findings are not different from the first model in general. On the top of the previous
results, the lagged coefficient of TOURIST is highly significant and around 47% for all models,
which validates the persistence and reputation effects. The coefficients of POPULATION and GDP
are again significant (0.99 and 0.62, with SDs of 0.08 and 0.04, respectively), as expected: the
greater (higher) the population (GDP per capita) of the origin country, the greater the number
of tourists flows to Turkey. CPI is negative and significant (–0.46 with a SD of 0.04), confirming
Table 2 about the cost motivation of the tourists. TRADE is highly significant as well, confirming
the importance of the economic ties between the origin country and Turkey on inbound tourists
to Turkey. In the dynamic model, time–invariant variables, i.e. practising the same religion,
sharing the same border, distance, sharing the same language have been deleted automatically.
Focusing on the control variables, SOAP OPERA is highly significant (0.12 with a SD of 0.02
and 0.14 with a SD of 0.04 in the last column), confirming once again–more strongly–that the
Turkish soap operas indeed influence foreign audiences of these soap operas and attract them to
Turkey. The Turkish government’s visa-waiving policy variable is also highly significant (0.31
with a SD of 0.06) in modelling the tourist inflows to Turkey. Once again, this finding supports
the view that the recent visa-waiving agreements of the Turkish government have boosted the
tourist flows from those countries.
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5 Concluding Remarks
In this paper, we examine the determinants of the recent increase in inbound tourist numbers to
Turkey, focusing on both the impact of exported Turkish soap operas and visa-free entry polices.
We show that previously determined factors, i.e. relative CPI, bilateral trade, population,
geographic and cultural factors, are effective in explaining the international tourism demand
of Turkey. Since 2001, there has been a boost in the volume of Turkish soap operas exported
abroad, particularly to Middle Eastern, Eastern European and North African countries. We
show that soap operas exported to these countries have influenced foreign audiences’ preferences,
leading to a sharp increase in the number of tourists inbound from those countries. Apart from
the soap operas, the government’s visa–waiving polices with other nations have also helped
ordinary foreign visitors to visit Turkey more easily, contributing to the recent increase in
number of visitors from these countries.
12
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Figure 1: The annual percentage change in the number of tourist inflows to Turkey
-30%
-20%
-10%
0%
10%
20%
30%
40%
1996 1997 1998 1999 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010
TOTAL
SOAP IMPORTINGCOUNTRIES
Source: Ministry of Culture and Tourism of Republic of Turkey and authors' own calculations. Total refers to the annual percentage change in tourist flows from all countries in our analysis, whereas Soap importing countries refers to the annual percentage change in tourist flows from countries which imported Turkish soap operas.
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Table 1: Descriptive Statistics
Mean SD Min Max Obs
ACCOMMODATIONj 242751 21019 202483 278255 1296BORDERij 0.06 0.28 0 1 1296COLONYij 0.04 0.31 0 1 1296COMMON LANGUAGEij 0.07 0.26 0 1 1296CPIj 0.49 2.12 12.12 10.12 1264DISTANCEij 4027 3774 502 17234 1264GDPi 14494 17328 321 118672 1296POPULATIONi 63652 185804 267.47 1318194 1296RELIGIONij 0.21 0.46 0 1 1296SOAP OPERAij 39.33 6.03 0 213.11 1296TOURISTij 200189 487358 108 4488350 1220TRADEij 1615 3430 12 4488350 1257VISAij 0.51 0.48 0 1 1296
Notes: The dependent variable, TOURISTij , is the number of tourist flows from source country (i) to Turkey (j ).COMMON LANGUAGEij is a binary variable that takes 1, if more than 80% of the population of both the source anddestination countries speak same language and 0 otherwise. Similarly, RELIGIONij is another binary variable thattakes 1 if more than 80% of the population of both the source and destination countries practise same religion and0 otherwise. ACCOMMODATIONj is the accommodation (total number of the rooms in hotels) available in Turkey.BORDERij is another binary variable that takes 1, if source country (i) and Turkey (j) shares same border and 0otherwise. DISTANCEij is the physical distance between the capital cities of source country (i) and Turkey (j) (inkilometres). GDPi is the real GDP per capita in source country (i), in USD. CPIj is the CPI of the destinationcountry adjusted by the exchange rate in USD. POPULATIONi is the total population of source country (i) inthousands. TRADEij is the total trade value (exports + imports) between source country (i) and Turkey (j ) inmillion USD. VISAij is again another binary variable that takes 1 if there are no visa requirements for the ordinarycitizens of country (i), entering Turkey, and 0 otherwise. SOAP OPERAij shows the number of hours of Turkishsoap operas exported to country (i).
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Table 2: Static Panel Data Estimation
Dependent Variable: The logarithm of the number of tourist flows from source countries to Turkey
(1) (2) (3) (4)
COMMON LANGUAGEij,t 1.82‡(0.46) 1.59‡(0.31) 2.19‡(0.21) 1.65‡(0.22)
DISTANCEij,t –0.94‡(0.19) –0.88‡(0.20) –0.87‡(0.20) 0.89‡(0.12)
BORDERij,t 1.44‡(0.36) 1.17‡(0.37) 1.43‡(0.40) 1.17‡(0.21)
RELIGIONij,t 0.94‡(0.19) 0.78‡(0.24) 0.91‡(0.19) 0.76‡(0.10)
GDPi,t 0.31‡(0.07) 0.24†(0.12) 0.32‡(0.14) 0.21‡(0.10)
TRADEij,t 1.20‡(0.26) 1.16‡(0.29) 3.92‡(0.35) 1.17‡(0.11)
POPULATIONi,t 0.21†(0.09) 0.23‡(0.06) 0.24‡(0.06) 0.22‡(0.05)
ACCOMMODATIONj,t 0.47‡(0.12) 0.46‡(0.10) 0.48‡(0.13) 0.65‡(0.11)
CPIj,t –0.31‡(0.06) –0.20†(0.08) –0.31‡(0.10) –0.22‡(0.11)
VISAij,t – 0.64†(0.17) – 0.64†(0.07)
SOAP OPERAij,t−1 – – 0.06‡(0.02) 0.09‡(0.02)
SAMPLE 1132 1132 1132 1132Jarque–Berra p–value 0.41 0.44 0.45 0.40ADJUSTED R−SQUARE 0.69 0.71 0.75 0.78
Notes: ∗, † and ‡ indicate that the relevant coefficient is significant at the 10%, 5% and 1% level, respectively.See Table 1 for the variable definitions. heteroskedasticity and autocorrelation–corrected standard errors arereported in parentheses.
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Table 3: Dynamic Panel Data Estimation
Dependent Variable: The log difference of the number of tourist flows from source countries to Turkey
(1) (2) (3) (4)
∆TOURISTij,t−1 0.47‡(0.03) 0.46‡(0.03) 0.47‡(0.03) 0.46‡(0.04)
∆GDPi,t 0.62‡(0.04) 0.57‡(0.04) 0.60‡(0.04) 0.57‡(0.04)
∆TRADEij,t 0.11‡(0.02) 0.08‡(0.01) 0.41‡(0.05) 0.13‡(0.04)
∆POPULATIONi,t 0.99‡(0.08) 1.12‡(0.10) 0.68†(0.10) 1.07†(0.10)
∆ACCOMMODATIONj,t 0.04(0.03) 0.06(0.14) 0.12†(0.06) 0.12†(0.06)
∆CPIj,t –0.46‡(0.04) –0.31‡(0.05) –0.42†(0.14) –0.32‡(0.04)
∆VISAij,t – 0.31‡(0.04) – 0.31‡(0.06)
∆SOAP OPERAij,t−1 – – 0.12‡(0.02) 0.14‡(0.04)
SAMPLE 1010 1010 1010 1010Jarque–Berra p–value 0.34 0.38 0.44 0.36AB(1) test p–value 0.21 0.26 0.20 0.41AB(2) test p–value 0.26 0.23 0.31 0.35Sargan statistic p–value 0.81 0.85 0.89 0.88
Notes: ∗, † and ‡ indicate that the relevant coefficient is significant at the 10%, 5% and 1% levels, respectively.See Table 1 for the variable definitions. Heteroskedasticity–corrected standard errors are reported in parentheses.
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