Mixture Composite Regression Models with Multi-type Feature Selection

IF 1.4 Q3 BUSINESS, FINANCE North American Actuarial Journal Pub Date : 2021-03-12 DOI:10.1080/10920277.2022.2099426
Tsz Chai Fung, G. Tzougas, M. Wüthrich
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引用次数: 13

Abstract

The aim of this article is to present a mixture composite regression model for claim severity modeling. Claim severity modeling poses several challenges such as multimodality, tail-heaviness, and systematic effects in data. We tackle this modeling problem by studying a mixture composite regression model for simultaneous modeling of attritional and large claims and for considering systematic effects in both the mixture components as well as the mixing probabilities. For model fitting, we present a group-fused regularization approach that allows us to select the explanatory variables that significantly impact the mixing probabilities and the different mixture components, respectively. We develop an asymptotic theory for this regularized estimation approach, and fitting is performed using a novel generalized expectation-maximization algorithm. We exemplify our approach on a real motor insurance dataset.
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多类型特征选择的混合复合回归模型
本文的目的是提出一个用于索赔严重性建模的混合复合回归模型。索赔严重性建模提出了几个挑战,例如数据中的多模态、尾重和系统效应。我们通过研究混合复合回归模型来解决这一建模问题,该模型用于同时建模摩擦性索赔和大型索赔,并考虑混合成分和混合概率中的系统效应。对于模型拟合,我们提出了一种组融合正则化方法,使我们能够分别选择显著影响混合概率和不同混合成分的解释变量。我们为这种正则化估计方法建立了一个渐近理论,并使用一种新的广义期望最大化算法进行拟合。我们在一个真实的汽车保险数据集上举例说明了我们的方法。
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来源期刊
CiteScore
2.80
自引率
14.30%
发文量
38
期刊最新文献
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