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# Project Topic on PARTIAL LEAST SQUARES REGRESSION ESTIMATION OF NONORTHOGONAL PROBLEMS

• Type: Project
• Department: Statistic
• Project ID: STS0081
• Access Fee: ₦3,000 (\$20)
• Pages: 64 Pages
• Format: Microsoft Word
• Views: 656

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ABSTRACT

In this project, Partial Least Square Regression was compared with Ordinary Least Square Regression (OLSR) to handle the problem of multicollinarity and small sample size on all Nigeria Insurance Companyâ€™s expenditure data. The prediction methods have been compared for efficiency through Root Mean Square Error (RMSE) and Mean Square Error (MSE). It is found that in this project Partial Least Square Regression (PLSR) provides better prediction as compared to the Ordinary Least Square Regression (OLSR).

Title page

Declaration

Certification

Dedication

Acknowledgement

Abstract

CHAPTER ONE

INTRODUCTION

1.1   Background of Study

1.2   Statement of Problem

1.3   Justification for the Study

1.4   Scope of the Study

1.5   Aim and Objectives

1.6   Limitation of the Study

1.7   Definition of terms

1.8    Outline of study

CHAPTER TWO

2.1 Literature Review

CHAPTER THREE

RESEARCH METHODOLOGY

3.1 Ordinary Least Square Regression

3.2 Assumptions of Multiple Regression

3.3 Partial Least Squares for Nonorthogonal Problem

3.3.1 General Form of Partial Least Square

3.3.2 Assumptions Underlying Partial Least Square Regression

3.3.3 The Main Analytical Tool

3.4 Correlation Matrix

3.5 The Variance Inflation factor

3.6 Tolerance Factor

3.7 Coefficient of Determination

3.9 Definition of Durbin Watsonâ€™s Statistic

3.10 Root Mean Square Deviation

3.11 ANOVA for Multiple Regression

3.12 Confidence Intervals for Multiple Regression

3.13 Grubbs Test for Outliers

3.14 Test on Individual Regression Coefficients

3.15  Statistic

3.16 Q-Q Plot

3.17 Whiteâ€™s Test for Heteroscedasticity

3.18 Data Presentation

CHAPTER FOUR

DATA ANALYSIS AND INTERPRETATIONS

4.1 Ordinary Least Squares Regression Results

4.1.2 Summary Statistics

4.1.3 Correlation Matrix

4.1.4 Whiteâ€™s Test of Heteroscedasticity

4.1.5 Grubbâ€™s Test

4.1.6 Multicollinearity Statistics

4.1.7 Goodness of Fit Statistics

4.1.8 Analysis of Variance

4.1.9 Model Parameter

4.1.10 O.L.S.R Predictions and Residuals

4.2 Partial Least Square Regression

CHAPTER FIVE

5.1 Summary

5.2 Conclusion

References

PARTIAL LEAST SQUARES REGRESSION ESTIMATION OF NONORTHOGONAL PROBLEMS
+234 8130 686 500
or
+234 8093 423 853

• Type: Project
• Department: Statistic
• Project ID: STS0081
• Access Fee: ₦3,000 (\$20)
• Pages: 64 Pages
• Format: Microsoft Word
• Views: 656
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#### Details

 Type Project Department Statistic Project ID STS0081 Fee ₦3,000 (\$20) No of Pages 64 Pages Format Microsoft Word

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