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Group regularization for zero-inflated poisson regression models with an application to insurance ratemaking

机译:对零充气泊松回归模型的组正则化,其应用于保险率

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摘要

Zero-inflated count models have received considerable amount of attention in recent years, fuelled by their widespread applications in many scientific disciplines. In this paper, we consider the problem of selecting grouped variables in zero-inflated Poisson (ZIP) models via group bridge regularization. The ZIP mixture likelihood with a group-wise penalty on the coefficients is formulated using least squares approximation and then the parameters involved in the penalized likelihood are estimated by an efficient group descent algorithm. We examine the effectiveness of our modeling procedure through extensive Monte Carlo simulations. An auto insurance claim dataset from the SAS Enterprise Miner database is analyzed for illustrative purposes. Finally, we derive theoretical properties of the proposed group variable selection procedure under certain regularity conditions. The open source software implementation of this method is publicly available at https://github.com/himelmallick/Gooogle.
机译:近年来,零充气的计数模型得到了相当大的关注,以许多科学学科在广泛的应用中推动。在本文中,我们考虑通过组桥正规化选择零充气泊松(ZIP)模型中的分组变量的问题。使用最小二乘近似配制与系数上的ZIP混合混合似然具有在系数上配制,然后通过有效的组缩减算法估计惩罚似然涉及的参数。我们通过广泛的蒙特卡罗模拟检查我们的建模程序的有效性。用于SAS Enterprise Miner数据库的汽车保险索赔数据集以进行说明性目的。最后,我们在某些规则条件下导出所提出的组变量选择程序的理论属性。此方法的开源软件实现在HTTPS://github.com/himelmallick/Google上公开可用。

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