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A CLASS OF MIXTURE OF EXPERTS MODELS FOR GENERAL INSURANCE: APPLICATION TO CORRELATED CLAIM FREQUENCIES

机译:一类普通保险专家模型的混合:在相关索赔频率中的应用

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摘要

This paper focuses on the estimation and application aspects of the Erlang count logit-weighted reduced mixture of experts model (EC-LRMoE), which is a fully flexible multivariate insurance claim frequency regression model. We first prove the identifiability property of the proposed model to ensure that it is a suitable candidate for statistical inference. An expectation conditional maximization (ECM) algorithm is developed for efficient model calibrations. Three simulation studies are performed to examine the effectiveness of the proposed ECM algorithm and the versatility of the proposed model. The applicability of the EC-LRMoE is shown through fitting an European automobile insurance data set. Since the data set contains several complex features, we find it necessary to adopt such a flexible model. Apart from showing excellent fitting results, we are able to interpret the fitted model in an insurance perspective and to visualize the relationship between policyholders' information and their risk level. Finally, we demonstrate how the fitted model may be useful for insurance ratemaking.
机译:本文着重于Erlang计数对数加权减少专家混合模型(EC-LRMoE)的估计和应用方面,该模型是一种完全灵活的多元保险索赔频率回归模型。我们首先证明所提出模型的可识别性,以确保它适合进行统计推断。开发了期望条件最大化(ECM)算法以进行有效的模型校准。进行了三个仿真研究,以检验所提出的ECM算法的有效性以及所提出模型的多功能性。通过拟合欧洲汽车保险数据集来显示EC-LRMoE的适用性。由于数据集包含多个复杂功能,因此我们发现有必要采用这种灵活的模型。除了显示出色的拟合结果外,我们还可以从保险角度解释拟合模型,并可视化保单持有人的信息与其风险水平之间的关系。最后,我们演示了拟合模型如何对保险费率制定有用。

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