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Page 1: final-stat 03 (2)

Welcome to Our Presentation

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Application of Statistical Tools in

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Prepared For

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Lubna RahmanLubna RahmanLecturerLecturer

Department of FinanceDepartment of FinanceUniversity of DhakaUniversity of Dhaka

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Prepared By

Name Roll

Shahanaz Parvin 16-117

Taioba Islam 16-251

S.M. Nazrul Islam 16-107

Md.Abu Daud 16-099

Md. Milan Hossain 16-019

Mohammad Marjan 16-261

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I am…..

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MOHAMMAD MARJANMOHAMMAD MARJAN16-26116-261

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Areas to Focus on

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Definition of statisticsTypes of Statistics Statistical DataStatistical ToolsCase StudyApplication of Statistical Tools

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What is Statistics?

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The term ‘statistics’

Simply means data.

It is the science of collecting, organizing, presenting, analyzing &interpreting data to assist in making more effective decisions.

It is a process of analyzing a sample based on which characterizes of a parameter can be identified.

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Types of Statistics

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Two types-

Descriptive

Inferential

Method of organizing, summarizing, & presenting data in an informative way

Method to estimate a property of a population on the basis of a sample

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I am…..

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TAIOBA ISLAM TAIOBA ISLAM 16-25116-251

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Statistical Data

Data are the facts and figures collected, summarized, analyzed, and interpreted.

Population:The amount of data collected from each & every target party.

Sample: Sample is a representative part of the population.

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Classification of Data

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DataData

QuantitativQuantitativee

NumericalNumerical

QualitativeQualitative

Non-Non-numericalnumerical

NumericalNumerical

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Statistical Tools

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Statistical Tools Cont’d

Mean:The mean of a data set is the average of all the data values.

Median:The median of a data set is the value in the middle when the data items are

arranged in ascending order.

Standard Deviation:It is a measure of how much spread or variability is present in the sample.

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I am…..

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MD. MILAN HOSSAIN MD. MILAN HOSSAIN 16-01916-019

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Case Study on-

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Current Assets Analysis

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Current Assets Analysis

Year Singer (X) BATBC (Y)

2006 1314926287 67546964

2007 1364282367 673783245

2008 1873806868 676467480

2009 2131239364 673260852

2010 1388597492 668461522

∑n=5 8072852378 3367460063

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Current Assets Analysis Cont’d

Com p any M ean M edian Standered Dev ision

Cof f icient o f V ariyion

Singer 161457 0 475 .6

1 3 885 9 7 4 9 2

3 6 6 6 2 13 9 9

2 2 . 7 0 7 %

BATBC 6 7 3 4 9 2 0 1 2 . 6

6 7 3 2 6 0 8 5 2

3 0 9 3 4 3 2. .55 9

4 5 . 9 %

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Evaluation:

Over all Singer has far more current asset than BATBC. But the amount fluctuates highly in case of Singer than that of BATBC.

8.98E+16 3.83E+18

6.26E+21 8.48E+15

6.72E+21 8.85E+17

2.67E+22 5.34E+17

5.11E+21 2.53E+18

5.38E+21 3.83E+18

XX YY

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I am…..

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MD. ABU DAUD MD. ABU DAUD 16-09916-099

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Equity Analysis

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Equity analysis

Year (n) Singer(X) BATBC(Y)

2006 336103088 320593350

2007 329341913 319812885

2008 372987641 327927749

2009 885987077 342714360

2010 1080830466 359966920

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Equity Analysis (Cont’d)

Company Mean Median Standard Deviation

Coefficient o f Variation

Singer 6 0 1 0 5 0 0 3 7

3 7 2 9 8 7 6 4

35 61 6 4 6 38..9

5 9 . 2 6 %

BATBC 33 4 2 0 3 0 5 2..8

3 2 7 9 2 7 7 4 9

17 0 8 7 2 7 5.5

51.13 %

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Evaluation:Singer has far more equity than that of BATBC but the equity of Singer changes very much over years which is not seen as much for BATBC.

7.02E+16 1.85E+14

7.38E+16 2.07E+13

5.20E+16 3.74E+14

8.12E+16 7.24E+13

2.30E+17 6.64E+14

5.07E+17 1.32E+15

XX YY

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I am…..

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SHAHANAZ PARVINSHAHANAZ PARVIN16-11716-117

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Correlation

Measure the association between two variables. Coefficient of correlation: A measure of the strength of the relationship between two variables

Revenue & Tax (Bata shoe Bangladesh Ltd)X= independent variable (revenue).

Y = dependent variable (tax)

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Any relationship between the revenue and tax paymentof Bata shoe Bangladesh Ltd.

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Correlation (Cont’d)

Year

Revenue(X)(Bata Shoe

BD Ltd) Tax(Y)

2010 5,663,090,394 199,000,000

2009 5,141,034,678 180,286,000

2008 4,623,312,077 170,219,000

2007 4,097,182,283 160,823,000

2006 3,605,567,170 150,137,000

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Coefficient of correlation:

= 0.989672291 High degree of positive relationship between these two variables. If revenue increases, tax increases and if revenue decreases, tax decreases.

Characteristics of the coefficient of correlation:It can range from -1.00 to 1.00.Values of -1.00 or 1.00 indicate perfect and strong correlation.Values close to 0.0 indicate weak correlation.Negative values indicate an inverse relationship and positive values indicate a direct relationship.

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22 YYXX

YYXXr

Correlation (Cont’d)

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The proportion of the total variation in the dependent variable that is explained by the variation in the independent variable.

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Coefficient of Determination (r2): 0.979451243 = 98%

Here 98% variability in the dependent variable Y (tax) can be explained by independent variable X (revenue).

Correlation (Cont’d)

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I am…..

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S.M. NAZRUL ISLAM S.M. NAZRUL ISLAM 16-10716-107

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Regression analysis: An equation that expresses the linear relationship between two variables . Estimates the unknown values of one variable from known values of another variable. Measures the degree of correlation that exists between the two variables.

The average relationship between X and Y can be described by a

linear equation Y=a + bX

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a

0 X

y=a+bx

b

1 unit X

Regression Analysis

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The Standard Error of Estimate: Measures the scatter, or dispersion, of the observed values around the line of regression

Y = a + bx express the change in Y in terms of change in X. b= Coefficient of regression /slope of regression line a= constant

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2)( 2

^

.

nYYs xy

Regression Analysis (Cont’d)

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=0.022727144 a = - b =66956383.8

So, the equation is, Y=66956383.8+0.022727144X

If revenue(X) increases by 1 core, tax (Y) will increases by 0.022727144 core. If the value of revenue is zero, the amount of tax will be 66956383.8Error, ei = 21631016.39

r2 = 98% ,as it is not 100%, there is some error.29

2)( XXYYXXb

XY

Regression Analysis (Cont’d)

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Point by point slope calculation: average slope= 0.023721688, but b = 0.022727144There are some other variables that can explain the variation in y which have been skipped.

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Regression Analysis (Cont’d)

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Any Quarry

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For Being with Us

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