• Declaration
• Certification
• Acknowledgment
• Abstract
• Table of Content
• List of Abbreviations
• List of Table
• List of Figures
• 1.1 Background Information
• 1.2 Problem Statement
• 1.3 Research Objectives
• 1.4 Working Hypotheses
• 1.5 Significance of the Study
• 1.6 Scope and Delimitation
• 1.6 Plan of the Study
• 2.0 Introduction
• 2.1Theoretical Literature Review
• 2.1.1 Definition of Key Term
• 2.1.2 Relationship Between Insurance companies and the Economy
• 2.2 Empirical Literature Review
• 2.3 Research Hypotheses
• 2.4Research Design
• 3.1.1 Number of Insurance Companies and their Management
• 3.1.2 Product and Services
• 3.1.3 Regulatory Authority
• 3.1.4 Industry Segmentation
• 3.2. Definition and Operationalization of Variables
• 3.2.1 Definition of Variables
• 3.2.2 Operationalization of Variables
• 3.3 Method and Instruments of Data Collection
• 3.3.1 Method of Data Collection
• 3.3.2 Instruments of Data Collection
• 3.4 Method and Instruments of Data Analyses
• 4.1 Presentation of Results
• 4.1.1 Presentation of Results of H1
• 4.1.2 Presentation of Results of H2
• 4.2. Discussion of Results
• 4.2.1 Discussion of Results of H1
• 4.2.2 Discussion of Results of H2
CONCLUSION AND RECOMMENDATIONS
• 5.1 Summary of Findings
• 5.2 Conclusion
• 5.3 Limitation of the Research
• 5.4 Recommendations
• 5.5 Suggestions for Further Research
• References
• Appendices
LIST OF ABBREVIATIONS
ASAC: Association des Sociétés d’assurance au Cameroun
BC: Before Christ
BICIC: Banque Internationale pour le Commerce et l’industrie du Cameroun
CE: Cameroon Economy
CEMAC: Communauté Economique et Monetaire de l’Afrique Centrale
CIMA: Code des Assurances des Etats Membres de la Cima
CRCA: Regional commission for Insurance Supervision
GDP: Gross Domestic Product
H1: Hypotheses 1
H2: Hypotheses 2
IARD: Fire, Accident and Miscellaneous Risk
ICP: Insurance Core Principles
LIC: Life Insurance Companies
MINEPAT: Ministry of Economy, Planning and Regional Development
MINFI: Ministry of Finance
N: Number of Years
NLIC: Non-Life Insurance Companies
RGDP: Real Gross Domestic Product
STV.DEV: Standard Deviation
SWOT: Strength, weaknesses, opportunities and threat
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