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Fitting multivariate Erlang mixtures to data: A roughness penalty approach

机译:拟合多元erlang混合物到数据:粗糙度罚球方法

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摘要

The class of multivariate Erlang mixtures with common scale parameter has many desirable properties and has widely been used in insurance loss modeling. The parameters of a multivariate Erlang mixture are normally estimated using an expectation- maximization (EM) algorithm as shown in Lee and Lin (2012) and Verbelen et al. (2016). However, when fitting the mixture to data of high dimension, the fitted density surface is often not smooth (with deep peaks and valleys) and the tail fitting may also be rather unsatisfactory. In this paper, we propose a generalized expectation conditional maximization (GECM) algorithm that maximizes a penalized likelihood with a proposed roughness penalty. The roughness penalty is based on integrated squared second derivative of the density function of aggregate data, which is used in functional data analysis. We illustrate the performance of the proposed method through some numerical experiments and real data applications. (C) 2020 Elsevier B.V. All rights reserved.
机译:具有公共尺度参数的多元Erlang混合模型具有许多令人满意的性质,在保险损失建模中得到了广泛的应用。多元Erlang混合物的参数通常使用期望最大化(EM)算法进行估计,如Lee和Lin(2012)和Verbelen等人(2016)所示。然而,当将混合物拟合到高维数据时,拟合的密度面通常不光滑(具有较深的峰谷),并且尾部拟合也可能相当不理想。在本文中,我们提出了一种广义期望条件最大化(GECM)算法,该算法通过提出的粗糙度惩罚最大化惩罚似然。粗糙度惩罚基于聚集数据密度函数的积分平方二阶导数,用于功能数据分析。我们通过一些数值实验和实际数据应用说明了该方法的性能。(C) 2020爱思唯尔B.V.版权所有。

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