A novel Bayesian Pay-As-You-Drive insurance model with risk prediction and causal mapping

Bingyang Wang , Ying Chen , Zichao Li
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引用次数: 0

Abstract

The modern vehicle insurance industry is increasingly adopting Pay-As-You-Drive (PAYD) insurance models, aligning premium costs with driving behavior. Our study introduces a Bayesian approach to PAYD insurance, leveraging the strengths of Naive Bayes classifiers and Bayesian Networks to handle uncertainty and integrate prior knowledge in risk assessment. The Naive Bayes model achieved an 87.5% accuracy in predicting risk partitions. With the Bayesian Network providing insights into causal relationships through a Directed Acyclic Graph (DAG), we also address the challenges of traditional actuarial models — low interpretability of intra-factor relationships and thus hard to plan for risk management for both provider and policyholder. Our research contributes to optimizing insurance pricing strategies. Still, the causal mapping also dismisses the meaningfulness of using geographic grouping in insurance pricing (discriminatory or not). It reassures the theoretical advantage of the PAYD model over the traditional model, facilitating access to affordable coverage for policyholders.
具有风险预测和因果映射功能的新型贝叶斯 "即付即开 "保险模型
现代车辆保险行业越来越多地采用 "随驾付费"(PAYD)保险模式,使保费成本与驾驶行为相一致。我们的研究为 PAYD 保险引入了贝叶斯方法,利用 Naive Bayes 分类器和贝叶斯网络的优势来处理不确定性,并在风险评估中整合先验知识。Naive Bayes 模型预测风险分区的准确率达到 87.5%。贝叶斯网络通过有向无环图(DAG)提供了对因果关系的洞察力,我们也解决了传统精算模型所面临的挑战--因素内部关系的可解释性较低,因此很难为提供者和投保人制定风险管理计划。我们的研究有助于优化保险定价策略。不过,因果映射也否定了在保险定价中使用地理分组的意义(无论是否具有歧视性)。它再次证明了 PAYD 模式相对于传统模式的理论优势,即促进投保人获得可负担得起的保险。
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CiteScore
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