Telematics combined actuarial neural networks for cross-sectional and longitudinal claim count data

Francis Duval, Jean-Philippe Boucher, Mathieu Pigeon
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Abstract

We present novel cross-sectional and longitudinal claim count models for vehicle insurance built upon the combinedd actuarial neural network (CANN) framework proposed by Wüthrich and Merz. The CANN approach combines a classical actuarial model, such as a generalized linear model, with a neural network. This blending of models results in a two-component model comprising a classical regression model and a neural network part. The CANN model leverages the strengths of both components, providing a solid foundation and interpretability from the classical model while harnessing the flexibility and capacity to capture intricate relationships and interactions offered by the neural network. In our proposed models, we use well-known log-linear claim count regression models for the classical regression part and a multilayer perceptron (MLP) for the neural network part. The MLP part is used to process telematics car driving data given as a vector characterizing the driving behavior of each insured driver. In addition to the Poisson and negative binomial distributions for cross-sectional data, we propose a procedure for training our CANN model with a multivariate negative binomial specification. By doing so, we introduce a longitudinal model that accounts for the dependence between contracts from the same insured. Our results reveal that the CANN models exhibit superior performance compared to log-linear models that rely on manually engineered telematics features.
用于横截面和纵向索赔数量数据的远程信息处理组合精算神经网络
我们在 Wüthrich 和 Merz 提出的组合精算神经网络(CANN)框架基础上,提出了新颖的车辆保险横截面和纵向理赔次数模型。CANN 方法将广义线性模型等经典精算模型与神经网络相结合。这种混合模型产生了一个由经典回归模型和神经网络部分组成的两部分模型。CANN 模型充分利用了这两部分的优势,为经典模型提供了坚实的基础和可解释性,同时利用神经网络的灵活性和能力来捕捉错综复杂的关系和相互作用。在我们提出的模型中,经典回归部分使用众所周知的对数线性索赔件数回归模型,神经网络部分使用多层感知器(MLP)。MLP 部分用于处理远程信息处理系统提供的汽车驾驶数据,这些数据是每个投保司机驾驶行为的特征向量。除了用于横截面数据的泊松分布和负二项分布外,我们还提出了一种使用多变量负二项分布规范训练 CANN 模型的程序。通过这种方法,我们引入了一个纵向模型,该模型考虑了同一被保险人的合同之间的依赖性。我们的研究结果表明,与依赖于人工设计的远程信息处理特征的对数线性模型相比,CANN 模型表现出更优越的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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