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Copula-based bivariate finite mixture regression models with an application for insurance claim count data

机译:基于Copula的双变量有限混合回归模型,应用保险理赔计数数据

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摘要

Abstract Modeling bivariate (or multivariate) count data has received increased interest in recent years. The aim is to model the number of different but correlated counts taking into account covariate information. Bivariate Poisson regression models based on the shock model approach are widely used because of their simple form and interpretation. However, these models do not allow for overdispersion or negative correlation, and thus, other models have been proposed in the literature to avoid these limitations. The present paper proposes copula-based bivariate finite mixture of regression models. These models offer some advantages since they have all the benefits of a finite mixture, allowing for unobserved heterogeneity and clustering effects, while the copula-based derivation can produce more flexible structures, including negative correlations and regressors. In this paper, the new approach is defined, estimation through an EM algorithm is presented, and then different models are applied to a Spanish insurance claim count database.
机译:摘要 近年来,对双变量(或多变量)计数数据进行建模越来越受到关注。目的是在考虑协变量信息的情况下对不同但相关的计数的数量进行建模。基于冲击模型方法的双变量泊松回归模型因其简单的形式和解释而被广泛应用。然而,这些模型不允许过度离散或负相关,因此,文献中提出了其他模型来避免这些限制。该文提出了基于copula的双变量有限混合回归模型。这些模型具有一些优势,因为它们具有有限混合物的所有优点,允许未观察到的异质性和聚类效应,而基于copula的推导可以产生更灵活的结构,包括负相关和回归。本文定义了新方法,提出了通过EM算法进行估计的方法,然后将不同的模型应用于西班牙保险理赔计数数据库。

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