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Risk Factor Selection in Rate Making: EM Adaptive LASSO for Zero-Inflated Poisson Regression Models

机译:利率制定中的风险因素选择:零膨胀泊松回归模型的EM自适应LASSO

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摘要

Risk factor selection is very important in the insurance industry, which helps precise rate making and studying the features of high-quality insureds. Zero-inflated data are common in insurance, such as the claim frequency data, and zero-inflation makes the selection of risk factors quite difficult. In this article, we propose a new risk factor selection approach, EM adaptive LASSO, for a zero-inflated Poisson regression model, which combines the EM algorithm and adaptive LASSO penalty. Under some regularity conditions, we show that, with probability approaching 1, important factors are selected and the redundant factors are excluded. We investigate the finite sample performance of the proposed method through a simulation study and the analysis of car insurance data from SAS Enterprise Miner database.
机译:风险因素的选择在保险业中非常重要,它有助于准确地制定费率并研究高质量被保险人的特征。零充气数据在保险中很常见,例如索赔频率数据,零充气使选择风险因素变得相当困难。在本文中,我们为零膨胀的Poisson回归模型提出了一种新的风险因素选择方法,即EM自适应LASSO,该方法结合了EM算法和自适应LASSO罚分。在某些规律性条件下,我们表明,当概率接近1时,选择重要因素,而排除冗余因素。我们通过仿真研究和SAS Enterprise Miner数据库中的汽车保险数据分析,研究了该方法的有限样本性能。

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