Title page
Approval page
Dedication
Acknowledgement
Abstract
Chapter ONE
INTRODUCTION
1.1 Background of the study
1.2 Statement of the Problems
1.3 Objectives of the study
1.4 Research Questions
1.5 Research hypothesis
1.6 Significance of the Study
1.7 Scope and Limitation of the Study
1.8 Definition of operational Terms
References
Chapter TWO
REVIEW OF RELATED LITERATURE
2.1 An overview
2.2 Literature review
2.3 Debt and Debt Management Defined
2.4 Types of Debt
2.5 How Banks Create Money
2.6 Common Causes and Problems of bad Debts
2.7 Fundamental of Credit Analysis
2.8 Prudential Guideline in Nigerian Banking
2.9 Minimizing Risk Associates with Bank Lending
2.10 The Need for Frequent Government Regulation
2.11 Short Coming of the Traditional Method of
Credit Analysis
Chapter THREE
RESEARCH METHODOLOGY AND DESIGN
3.1 An overview
3.2 Sources of data
3.2.1 Primary data
3.2.2 Secondary data
3.3 Population of the study
3.4 Sample and Sampling Technique
3.5 Instrument use in collecting sample size
3.6 Validation and reliability of the Instrument used
3.7 Method of Data presentation and analysis
Chapter FOUR
DATA PRESENTATION, ANALYSIS AND DISCUSSION OF FINDINGS
4.1 An overview
4.2 Presentation of data
4.3 Presentation of analysis of data
4.4 Testing of hypothesis
4.5 Discussion of findings
Chapter FIVE
SUMMARY OF FINDINGS, CONCLUSIONS AND RECOMMENDATIONS
5.1 Summary of the Findings
5.2 Conclusions
5.3 Recommendations
5.4 Suggestions for further studies
Bibliography
Appendix I
Appendix II
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