This paper addresses the task of modeling severity losses using segmentation when the data distribution does not fall into the usual regression frameworks. This situation is not uncommon in lines of business such as third-party liability insurance, where heavy-tails and multimodality often hamper a direct statistical analysis. We propose to use regression models based on phase-type distributions, regressing on their underlying inhomogeneous Markov intensity and using an extension of the EM algorithm. These models are interpretable and tractable in terms of multi-state processes and generalize the proportional hazards specification when the dimension of the state space is larger than one. We show that the combination of matrix parameters, inhomogeneity transforms, and covariate information provides flexible regression models that effectively capture the entire distribution of loss severities.
翻译:本文论述在数据分布不纳入通常回归框架时使用分块法模拟严重性损失的任务,这种情况在第三方责任保险等业务中并不少见,在第三方责任保险中,重尾和多式联运往往妨碍直接的统计分析。我们提议使用基于阶段类型分布的回归模型,在原始的不相容马克夫强度上退缩,并使用EM算法的延伸。这些模型在多州进程方面是可以解释和可移植的,并在国家空间的尺寸大于1时普遍采用比例危害规格。我们表明,矩阵参数的组合、不相容性和共变异性信息提供了灵活的回归模型,有效地反映了损失分块的整个分布。