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Robust fitting of claim severity distributions and the method of trimmed moments

机译:索赔严重性分布的稳健拟合和微调矩的方法

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摘要

Many quantities arising in non-life insurance depend on claim severity distributions, which are usually modeled assuming a parametric form. Obtaining good estimates of the quantities, therefore, reduces to having good estimates of the model parameters. However, the notion of 'good estimate' depends on the problem at hand. For example, the maximum likelihood estimators (MLEs) are efficient, but they generally lack robustness. Since outliers are common in insurance loss data. it is therefore important to have a method that allows one to balance between efficiency and robustness. Guided by this philosophy, in the present paper we suggest a general estimation method that we call the method of trimmed moments (MTM). This method is appropriate for various model-fitting situations including those for which a close fit in one or both tails of the distribution is not required. The MTM estimators can achieve various degrees of robustness, and they also allow the decision maker to easily see the actions of the estimators on the data, which makes them particularly appealing. We illustrate these features with detailed theoretical analyses and simulation studies of the MTM estimators in the case of location-scale families and several loss distributions such as lognormal and Pareto. As a further illustration, we analyze a real data set concerning hurricane damages in the United States from 1925 to 1995.
机译:非人寿保险中产生的许多数量取决于索赔的严重性分布,通常以参数形式进行建模。因此,获得良好的数量估计会减少对模型参数的良好估计。但是,“良好估计”的概念取决于当前的问题。例如,最大似然估计器(MLE)是有效的,但它们通常缺乏鲁棒性。由于离群值在保险损失数据中很常见。因此,重要的是要有一种方法能够在效率和鲁棒性之间取得平衡。以此哲学为指导,在本文中,我们提出了一种通用的估算方法,称为平动矩方法(MTM)。此方法适用于各种模型拟合情况,包括不需要在分布的一个或两个尾部紧密拟合的情况。 MTM估计器可以实现各种程度的鲁棒性,并且还使决策者可以轻松地看到估计器对数据的操作,这使它们特别有吸引力。我们通过详细的理论分析和对MTM估计量的模拟研究(在位置尺度族和若干损失分布(如对数正态和帕累托)的情况下)来说明这些功能。作为进一步的说明,我们分析了有关1925年至1995年美国飓风损害的真实数据集。

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