Loss ratio dynamics

IF 1.1 Q3 BUSINESS, FINANCE Risk Management and Insurance Review Pub Date : 2023-09-28 DOI:10.1111/rmir.12247
Martin F. Grace
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Abstract

Abstract Many studies of the insurance profit cycle use industry‐level annual data and focus on the existence of an AR(2) process. We take a different approach by adopting the idea of possible hard and soft markets, but they are not necessarily cyclical in the classic sense. In addition to aggregated data, we use quarterly firm‐level data to examine loss ratio behavior over time. This approach allows one to assess the firm‐level heterogeneity in the insurance market. We further use a Markov switching model to assess the heterogeneity of response to economic variables. Using a K‐means cluster approach, we examine the different clusters of firms and their different behavior over 2001q1−2020q4.
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损失率动力学
许多关于保险利润周期的研究使用行业层面的年度数据,并关注于AR(2)过程的存在。我们采用了一种不同的方法,即可能存在硬市场和软市场,但它们并不一定是传统意义上的周期性。除了汇总数据外,我们还使用公司层面的季度数据来检查损失率随时间的变化。这种方法允许人们评估保险市场中公司层面的异质性。我们进一步使用马尔可夫切换模型来评估对经济变量响应的异质性。使用K均值聚类方法,我们研究了2001年第一季度至2020年第四季度不同的企业集群及其不同的行为。
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来源期刊
Risk Management and Insurance Review
Risk Management and Insurance Review Economics, Econometrics and Finance-Finance
CiteScore
1.90
自引率
0.00%
发文量
28
期刊介绍: Risk Management and Insurance Review publishes respected, accessible, and high-quality applied research, and well-reasoned opinion and discussion in the field of risk and insurance. The Review"s "Feature Articles" section includes original research involving applications and applied techniques. The "Perspectives" section contains articles providing new insights on the research literature, business practice, and public policy. The "Educational Insights" section provides a repository of high-caliber model lectures in risk and insurance, along with articles discussing and evaluating instructional techniques.
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