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Artificial Intelligence-Based Automated Actuarial Pricing and Underwriting Model for the General Insurance Sector

Artificial Intelligence-Based Automated Actuarial Pricing and Underwriting Model for the General Insurance Sector
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摘要 The Automated Actuarial Pricing and Underwriting Model has been enhanced and expanded through the implementation of Artificial Intelligence to automate three distinct actuarial functions: loss reserving, pricing, and underwriting. This model utilizes data analytics based on Artificial Intelligence to merge microfinance and car insurance services. Introducing and applying a no-claims bonus rate system, comprising base rates, variable rates, and final rates, to three key policyholder categories significantly reduces the occurrence and impact of claims while encouraging increased premium payments. We have enhanced frequency-severity models with eight machine learning algorithms and adjusted the Automated Actuarial Pricing and Underwriting Model for inflation, resulting in outstanding performance. Among the machine learning models utilized, the Random Forest (RANGER) achieved the highest Total Aggregate Comprehensive Automated Actuarial Loss Reserve Risk Pricing Balance (ACAALRRPB), establishing itself as the preferred model for developing Automated Actuarial Underwriting models tailored to specific policyholder categories. The Automated Actuarial Pricing and Underwriting Model has been enhanced and expanded through the implementation of Artificial Intelligence to automate three distinct actuarial functions: loss reserving, pricing, and underwriting. This model utilizes data analytics based on Artificial Intelligence to merge microfinance and car insurance services. Introducing and applying a no-claims bonus rate system, comprising base rates, variable rates, and final rates, to three key policyholder categories significantly reduces the occurrence and impact of claims while encouraging increased premium payments. We have enhanced frequency-severity models with eight machine learning algorithms and adjusted the Automated Actuarial Pricing and Underwriting Model for inflation, resulting in outstanding performance. Among the machine learning models utilized, the Random Forest (RANGER) achieved the highest Total Aggregate Comprehensive Automated Actuarial Loss Reserve Risk Pricing Balance (ACAALRRPB), establishing itself as the preferred model for developing Automated Actuarial Underwriting models tailored to specific policyholder categories.
作者 Brighton Mahohoho Charles Chimedza Florance Matarise Sheunesu Munyira Brighton Mahohoho;Charles Chimedza;Florance Matarise;Sheunesu Munyira(Department of Mathematics & Computational Sciences, University of Zimbabwe, Harare, Zimbabwe;School of Statistics & Actuarial Science, University of Witwatersrand, Johannesburg, South Africa)
出处 《Open Journal of Statistics》 2024年第3期294-340,共47页 统计学期刊(英文)
关键词 Artificial Intelligence Automated Actuarial Loss Reserves Automated Actuarial Risk Pricing Automated Actuarial Underwriting Artificial Intelligence Automated Actuarial Loss Reserves Automated Actuarial Risk Pricing Automated Actuarial Underwriting
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