Wednesday, April 3, 2024 11:15am to 12:05pm
About this Event
220 Parkway Dr., Clemson, SC 29634, USA
Title: Hierarchical Dependence Modeling for the Analysis of Large Insurance Claims Data
Abstract: Extreme weather events associated with climate change have caused significant damages. In particular, hailstorms damage millions of properties in the U.S. resulting in billion-dollar insured losses each year in the recent decade. To facilitate the insurance claims management operations in insurance companies, we construct a hierarchical dependence model which accommodates the complex dependence within and between the outcomes of interests including the propensity of filing a claim, time to report a claim, and the claim amount. The storm-specific and property-specific characteristics are incorporated through marginal models, such as generalized linear models and survival analysis models. The dependence within the hail event is captured by spatial factor copula, while the dependence between different outcomes is captured by bivariate copula. For parameter estimation, we develop a two-step procedure that first maximizes the marginal likelihood function and then maximizes the pairwise likelihood, which ensures computational feasibility for big data. We apply this modeling framework to analyze a large dataset involving hailstorms in Colorado from 2011 to 2015 impacting hundreds of thousands of insured properties and demonstrate that the predictive performance can be improved by our proposed methodology.
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