Statistical Analysis

 

 

Statistical Analysis

 

 

Research study

To investigate the relationship between fiscal policy and Foreign Direct Investment (FDI) in Singapore

Specific Objectives

  1. To investigate the relationship between Country Risk (CR) and Foreign Direct Investment (FDI) in Singapore.
  2. To investigate the relationship between Human Capital (HC) and Foreign Direct Investment (FDI) in Singapore.
  3. To investigate the relationship between Market Size (GDP) and Foreign Direct Investment (FDI) in Singapore.
  4. To investigate the relationship between Corporate Income Tax Rate (TR) and Foreign Direct Investment (FDI) in Singapore.

Research questions

This study proposes to investigate the following research questions:

  1. Is there a significant relationship between Country Risk (CR) and Foreign Direct Investment (FDI) in Singapore?
  2. Is there a significant relationship between Human Capital (HC) and Foreign Direct Investment (FDI) in Singapore?
  3. Is there a significant relationship between Market Size (GDP) and   Foreign Direct Investment (FDI) in Libya?
  4. Is there a significant relationship between Corporate Income Tax Rate (TR) and   Foreign Direct Investment (FDI) in Singapore?

Research hypotheses

H1: There is a significant relationship between Country Risk (CR) and Foreign Direct Investment (FDI) in Singapore?

H2: There is a significant relationship between Human Capital (HC) and Foreign Direct Investment (FDI) in Singapore.

H3: There is a significant relationship between Market Size (GDP) and   Foreign Direct Investment (FDI) in Singapore.

H4: There is a significant relationship between Corporate Income Tax Rate (TR) and   Foreign Direct Investment (FDI) in Libya.

The proposed model to conduct the data analysis is simple linear regression model shown below:

Simple Linear Regression:  

  • – Dependent Variable
  • – Independent
  • Y-intercept
  • – Change in mean of Y when X increases by 1 (slope)
  •  –  Random error term

 

Substituting this to the case study we get:

FDI = f (CR, HC, GDP, TR) and the econometric form of the simple linear regression becomes:

FDIi0+(β1*CRi)+(β2*HCi)+(β3*GDPi)+(β4*TRi) + εi

Where

CR: Country Risk

HC: Human Capital

GDP: Gross Domestic Product

TR: Corporate Income Tax Rate

ε i= Random error term.

β = Parameters (β0 = parameter at the Y-intercept

 

In this case:

The study variables are:

Independent variables are:

  1. CR: Country Risk
  2. HC: Human Capital
  3. GDP: Gross Domestic Product
  4. TR: Corporate Income Tax Rate

 

Dependent variable is the Foreign Direct Investment (FDI)

The case study runs from 2000 to 2010 (11 years)

 

In order to test the 6 hypotheses in the study, the relationships between the dependent variable (FDI) with each of the 6 independent variables should be done; hence the model equation will be broken down for each variable to give the following equations:

 

  1. Country Risk

FDIi01*CRi+ εi

  1. Human Capital

FDIi02*HCi + εi

  1. Market Size (GDP)

FDIi03*GDPi + εi

  1. Exchange Rate

FDIi04*TRi+ εi

 

The data to be used for analysis is as follows:

Table 1: Statistics of the study variables

Year 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 2010
Net Foreign Direct Investment (FDI) $43,000

 

$308,000 $281,000 $80,000 $71,000 $910,000 $1,590,000 $756,200 $1,776,900 $206,000 $938,000
Country Risk (CR), % 45 45 50 50 55 55 55 55 60 60 55
Human Capital (HC) 1801053.8 1872069.2 1943603.2 2005730.2 2067876.2 2127432.9 2189598.9 2253432.3 2306727.316 2352625.4 2379115.6
Market Size (GDP in $ million) $33,896 $28,420 $19,842 $24,062 $33,384 $44,000 $56,484 $71,803 $93,167 $62,360 $74,232
Corporate Income Tax Rate (T R ), % 30.8 30.8 30.8 30.8 30.8 30.8 40 40 40 40 20

 

 

 

 

 

 

 

 

 

 

 

 

Table 2: The relationship between Corporate Income Tax Rate and Net Foreign Direct Investment

 

 

                                                               

Descriptive Analysis

Descriptive Statistics
Mean Std. Deviation N
Net Foreign Direct Investment (FDI) in $million 632736.36 615702.744 11
Corporate Income Tax Rate 33.16 6.275 11

 

Correlation Analysis

Correlations
Net Foreign Direct Investment (FDI) in $million Corporate Income Tax Rate
Pearson Correlation Net Foreign Direct Investment (FDI) in $million 1.000 .343
Corporate Income Tax Rate .343 1.000
Sig. (1-tailed) Net Foreign Direct Investment (FDI) in $million . .151
Corporate Income Tax Rate .151 .
N Net Foreign Direct Investment (FDI) in $million 11 11
Corporate Income Tax Rate 11 11

 

 

The association between Corporate Income Tax Rate (TR) as well as Foreign Direct Investment (FDI) in Singapore is not that significant. This is so because the Pearson correlation is greater than 0.05. In a nutshell, an increase in FDI does not necessarily have a bearing on the corporate income tax rate. The opposite doesn’t add up. The same association is evident in the scatter plot.

 

Regression Analysis

 

 

Descriptive Statistics
Mean Std. Deviation N
Net Foreign Direct Investment (FDI) in $million 632736.36 615702.744 11
Corporate Income Tax Rate 33.16 6.275 11

 

 

Correlations
Net Foreign Direct Investment (FDI) in $million Corporate Income Tax Rate
Pearson Correlation Net Foreign Direct Investment (FDI) in $million 1.000 .343
Corporate Income Tax Rate .343 1.000
Sig. (1-tailed) Net Foreign Direct Investment (FDI) in $million . .151
Corporate Income Tax Rate .151 .
N Net Foreign Direct Investment (FDI) in $million 11 11
Corporate Income Tax Rate 11 11

 

 

Variables Entered/Removedb
Model Variables Entered Variables Removed Method
1 Corporate Income Tax Ratea . Enter
  1. All requested variables entered.
  2. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

Model Summaryb
Model R R Square Adjusted R Square Std. Error of the Estimate
1 .343a .118 .020 609670.033
  1. Predictors: (Constant), Corporate Income Tax Rate
  2. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

 

 

 

ANOVAb
Model Sum of Squares df Mean Square F Sig.
1 Regression 4.456E11 1 4.456E11 1.199 .302a
Residual 3.345E12 9 3.717E11
Total 3.791E12 10
  1. Predictors: (Constant), Corporate Income Tax Rate
  2. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

Coefficientsa
Model Unstandardized Coefficients Standardized Coefficients t Sig. Collinearity Statistics
B Std. Error Beta Tolerance VIF
1 (Constant) -482937.000 1035389.929 -.466 .652
Corporate Income Tax Rate 33641.467 30724.659 .343 1.095 .302 1.000 1.000
  1. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

Collinearity Diagnosticsa
Model Dimension Eigenvalue Condition Index Variance Proportions
(Constant) Corporate Income Tax Rate
1 1 1.984 1.000 .01 .01
2 .016 11.176 .99 .99
  1. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

Residuals Statisticsa
Minimum Maximum Mean Std. Deviation N
Predicted Value 189892.33 862721.69 632736.36 211097.309 11
Residual -656721.688 914178.313 .000 578383.778 11
Std. Predicted Value -2.098 1.089 .000 1.000 11
Std. Residual -1.077 1.499 .000 .949 11
  1. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

The regression equation is

FDI = -2.3+0.153*TR

The representation does not exhibit any significance because Pearson Correlation ANOVA is greater than 5%. The benchmark variable as well as the interceptor is equally not significant at 0.05% level.

 

Table 3: The relationship between Country Risk and Net Foreign Direct Investment

 

 

Descriptive Statistics
Mean Std. Deviation N
Net Foreign Direct Investment (FDI) in $million 632736.36 615702.744 11
Country Risk (CR), % 53.18 5.135 11

 

 

Correlations
Net Foreign Direct Investment (FDI) in $million Country Risk (CR), %
Pearson Correlation Net Foreign Direct Investment (FDI) in $million 1.000 .546
Country Risk (CR), % .546 1.000
Sig. (1-tailed) Net Foreign Direct Investment (FDI) in $million . .041
Country Risk (CR), % .041 .
N Net Foreign Direct Investment (FDI) in $million 11 11
Country Risk (CR), % 11 11

 

 

 

The association between Country Risk (CR) and Foreign Direct Investment (FDI) in Singapore.is not significant because of Pearson value that is higher than 0.005. Implicitly, an increase in foreign direct outlay does not necessary lead to an increase in the country risk and the scatter plot illustrates this in black and white.

Regression Analysis

 

Descriptive Statistics
Mean Std. Deviation N
Net Foreign Direct Investment (FDI) in $million 632736.36 615702.744 11
Country Risk (CR), % 53.18 5.135 11

 

 

 

 

 

Correlations
Net Foreign Direct Investment (FDI) in $million Country Risk (CR), %
Pearson Correlation Net Foreign Direct Investment (FDI) in $million 1.000 .546
Country Risk (CR), % .546 1.000
Sig. (1-tailed) Net Foreign Direct Investment (FDI) in $million . .041
Country Risk (CR), % .041 .
N Net Foreign Direct Investment (FDI) in $million 11 11
Country Risk (CR), % 11 11

 

 

Variables Entered/Removedb
Model Variables Entered Variables Removed Method
1 Country Risk (CR), %a . Enter
  1. All requested variables entered.
  2. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

Model Summary
Model R R Square Adjusted R Square Std. Error of the Estimate
1 .546a .298 .220 543819.832
  1. Predictors: (Constant), Country Risk (CR), %

 

 

 

 

 

 

ANOVAb
Model Sum of Squares df Mean Square F Sig.
1 Regression 1.129E12 1 1.129E12 3.818 .082a
Residual 2.662E12 9 2.957E11
Total 3.791E12 10
  1. Predictors: (Constant), Country Risk (CR), %
  2. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

Coefficientsa
Model Unstandardized Coefficients Standardized Coefficients t Sig. Collinearity Statistics
B Std. Error Beta Tolerance VIF
1 (Constant) -2847857.759 1788742.844 -1.592 .146
Country Risk (CR), % 65447.069 33492.872 .546 1.954 .082 1.000 1.000
  1. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

Collinearity Diagnosticsa
Model Dimension Eigenvalue Condition Index Variance Proportions
(Constant) Country Risk (CR), %
1 1 1.996 1.000 .00 .00
2 .004 21.772 1.00 1.00
  1. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

 

The regression equation is

FDI = -16.85+0.369*CR

The representation is not significant at 0.05% level owing to the Pearson Correlation value of ANOVA which is greater than 5%. Both the interceptor and the benchmark variable is significant at 0.05% level. This representation implies that in the event of an increase in foreign direct investment does not necessary lead to an increase in the country risk and the scatter plot illustrates this in black and white.

 

 

Table 4: The relationship between Human Capital and Net Foreign Direct Investment

 

Descriptive Statistics
Mean Std. Deviation N
Net Foreign Direct Investment (FDI) in $million 632736.36 615702.744 11
Human Capital (HC) 2118115.00 197198.777 11

 

 

Correlations
Net Foreign Direct Investment (FDI) in $million Human Capital (HC)
Pearson Correlation Net Foreign Direct Investment (FDI) in $million 1.000 .578
Human Capital (HC) .578 1.000
Sig. (1-tailed) Net Foreign Direct Investment (FDI) in $million . .031
Human Capital (HC) .031 .
N Net Foreign Direct Investment (FDI) in $million 11 11
Human Capital (HC) 11 11

 

 

 

 

Foreign Direct Investment (FDI) as well as Human Capital does not exhibit a strong association owing to a higher Pearson correlation value. In reality, an increase in human capital culminates does not necessarily have an impact on foreign direct investment; however the opposite will never be any truer. The scatter plot demonstrates this reality.

 

Regression Analysis

 

 

Descriptive Statistics
Mean Std. Deviation N
Net Foreign Direct Investment (FDI) in $million 632736.36 615702.744 11
Human Capital (HC) 2118115.00 197198.777 11

 

 

Correlations
Net Foreign Direct Investment (FDI) in $million Human Capital (HC)
Pearson Correlation Net Foreign Direct Investment (FDI) in $million 1.000 .578
Human Capital (HC) .578 1.000
Sig. (1-tailed) Net Foreign Direct Investment (FDI) in $million . .031
Human Capital (HC) .031 .
N Net Foreign Direct Investment (FDI) in $million 11 11
Human Capital (HC) 11 11

 

 

Variables Entered/Removedb
Model Variables Entered Variables Removed Method
1 Human Capital (HC)a . Enter
  1. All requested variables entered.
  2. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

Model Summaryb
Model R R Square Adjusted R Square Std. Error of the Estimate
1 .578a .334 .260 529635.412
  1. Predictors: (Constant), Human Capital (HC)
  2. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

ANOVAb
Model Sum of Squares df Mean Square F Sig.
1 Regression 1.266E12 1 1.266E12 4.514 .063a
Residual 2.525E12 9 2.805E11
Total 3.791E12 10
  1. Predictors: (Constant), Human Capital (HC)
  2. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

Coefficientsa
Model Unstandardized Coefficients Standardized Coefficients t Sig. Collinearity Statistics
B Std. Error Beta Tolerance VIF
1 (Constant) -3189428.774 1806037.273 -1.766 .111
Human Capital (HC) 1.805 .849 .578 2.125 .063 1.000 1.000
  1. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

Collinearity Diagnosticsa
Model Dimension Eigenvalue Condition Index Variance Proportions
(Constant) Human Capital (HC)
1 1 1.996 1.000 .00 .00
2 .004 22.575 1.00 1.00
  1. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

Residuals Statisticsa
Minimum Maximum Mean Std. Deviation N
Predicted Value 60595.44 1103715.25 632736.36 355847.672 11
Residual -849913.313 828270.063 .000 502456.270 11
Std. Predicted Value -1.608 1.324 .000 1.000 11
Std. Residual -1.605 1.564 .000 .949 11
  1. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

The regression equation is

FDI = -105.57+2.049 *HC

The representation is not significant because the P-value is greater than 5% on the Pearson correlation. Both the interceptor as well as the benchmark variable is non-significant at 0.05. In reality, an increase in human capital culminates does not necessarily have an impact on foreign direct investment; however the opposite will never be any truer.

 

Table 5: The relationship between Market Size (GDP) and Net Foreign Direct Investment

 

Descriptive Statistics
Mean Std. Deviation N
Net Foreign Direct Investment (FDI) in $million 632736.36 615702.744 11
Market Size (GDP in $ million) 49240.91 23945.428 11

 

 

Correlations
Net Foreign Direct Investment (FDI) in $million Market Size (GDP in $ million)
Pearson Correlation Net Foreign Direct Investment (FDI) in $million 1.000 .743
Market Size (GDP in $ million) .743 1.000
Sig. (1-tailed) Net Foreign Direct Investment (FDI) in $million . .004
Market Size (GDP in $ million) .004 .
N Net Foreign Direct Investment (FDI) in $million 11 11
Market Size (GDP in $ million) 11 11

 

 

 

The association between Market Size (GDP) and Foreign Direct Investment (FDI) in Singapore is promising and significant based on the fact that the Pearson value is less than .005.  In reality, if the market size balloon, foreign direct investment is also goes up and the opposite is equally true. This is also evident in the scatter plot.

 

Regression Analysis

 

 

Descriptive Statistics
Mean Std. Deviation N
Net Foreign Direct Investment (FDI) in $million 632736.36 615702.744 11
Market Size (GDP in $ million) 49240.91 23945.428 11

 

 

Correlations
Net Foreign Direct Investment (FDI) in $million Market Size (GDP in $ million)
Pearson Correlation Net Foreign Direct Investment (FDI) in $million 1.000 .743
Market Size (GDP in $ million) .743 1.000
Sig. (1-tailed) Net Foreign Direct Investment (FDI) in $million . .004
Market Size (GDP in $ million) .004 .
N Net Foreign Direct Investment (FDI) in $million 11 11
Market Size (GDP in $ million) 11 11

 

 

Variables Entered/Removedb
Model Variables Entered Variables Removed Method
1 Market Size (GDP in $ million)a . Enter
  1. All requested variables entered.
  2. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

Model Summaryb
Model R R Square Adjusted R Square Std. Error of the Estimate
1 .743a .552 .502 434429.979
  1. Predictors: (Constant), Market Size (GDP in $ million)
  2. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

 

 

ANOVAb
Model Sum of Squares df Mean Square F Sig.
1 Regression 2.092E12 1 2.092E12 11.086 .009a
Residual 1.699E12 9 1.887E11
Total 3.791E12 10
  1. Predictors: (Constant), Market Size (GDP in $ million)
  2. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

Coefficientsa
Model Unstandardized Coefficients Standardized Coefficients t Sig. Collinearity Statistics
B Std. Error Beta Tolerance VIF
1 (Constant) -307893.924 311392.401 -.989 .349
Market Size (GDP in $ million) 19.103 5.737 .743 3.330 .009 1.000 1.000
  1. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

Collinearity Diagnosticsa
Model Dimension Eigenvalue Condition Index Variance Proportions
(Constant) Market Size (GDP in $ million)
1 1 1.907 1.000 .05 .05
2 .093 4.534 .95 .95
  1. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

 

Residuals Statisticsa
Minimum Maximum Mean Std. Deviation N
Predicted Value 71140.23 1471839.75 632736.36 457420.378 11
Residual -677345.375 818901.625 .000 412136.465 11
Std. Predicted Value -1.228 1.834 .000 1.000 11
Std. Residual -1.559 1.885 .000 .949 11
  1. Dependent Variable: Net Foreign Direct Investment (FDI) in $million

 

The regression equation is

FDI = -1.929+0.000095* GDP

 

The representation is important and significant at 0.05 levels owing to the fact that the P-value of ANOVA table is less than 5%. The benchmark variable is important at 0.05% level although the integrator is not significant for the model. The residual is proportionately distributed as shown by the histogram as well as the normal p-p plot.

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

 

References

Douglas C. (2000). Montgomery, Design and Analysis of Experiments, 5th ed., John Wiley           and Sons, Inc. New York.

George Casella, Roger L. Berger, (2001). Statistical Inference, 2nd ed., Duxbury Press,.

Johnson, Richard A.; Wichern, Dean W. (2007). Applied Multivariate Statistical Analysis   (Sixth ed.). Prentice Hall.

Peter J. Bickel, Kjell A. Doksum,(2011). Mathematical Statistics, Volume 1, Basic Ideas and         Selected Topics, 2rd ed. Prentice Hall.

Robert V. Hogg, Allen T. Craig, Joseph W. McKean,(2004).  An Introduction to     Mathematical Statistics, 6th ed., Prentice Hall.

Saunders, M., Lewis, P. and Thornhill, A. (2003), “Research Methods for Business            Students”, Third Edition, Prentice-Hall International, New Jersey.

Sen, M. Srivastava,(2011). Regression Analysis — Theory, Methods, and Applications,       Springer-Verlag, Berlin.

Warne, R. Lazo, M., Ramos, T. and Ritter, N. (2012). Statistical Methods Used in Gifted             Education Journals, 2006–2010. Gifted Child Quarterly, 56(3) 134–149.

 

 

 

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