Insurance pricing with hierarchically structured data: An illustration with a workers' compensation insurance portfolio

Authors: Bavo D. C. Campo, Katrien Antonio

36 pages (including Appendix), 18 figures and 3 tables

Abstract: Actuaries use predictive modeling techniques to assess the loss cost on a contract as a function of observable risk characteristics. State-of-the-art statistical and machine learning methods are not well equipped to handle hierarchically structured risk factors with a large number of levels. In this paper, we demonstrate the construction of a data-driven insurance pricing model when hierarchically structured risk factors, contract-specific as well as externally collected risk factors are available. We examine the pricing of a workers' compensation insurance product with a hierarchical credibility model (Jewell, 1975), Ohlsson's combination of a generalized linear and a hierarchical credibility model (Ohlsson, 2008) and mixed models. We compare the predictive performance of these models and evaluate the effect of the distributional assumption on the target variable by comparing linear mixed models with Tweedie generalized linear mixed models. For our case-study the Tweedie distribution is well suited to model and predict the loss cost on a contract. Moreover, incorporating contract-specific risk factors in the predictive model improves the performance and allows for a improved risk differentiation in our workers' compensation insurance portfolio.

Submitted to arXiv on 30 Jun. 2022

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