参数风险模型的通用度量方法

Michael R. Powers, Jiaxin Xu
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引用次数: 0

摘要

参数统计方法在通过基本的频率和严重性成分分析风险方面发挥着核心作用。由于数值算法和高速计算机的广泛应用,研究人员和从业人员通常会通过对历史数据拟合大量参数概率分布,然后比较拟合优度统计来模拟这些独立的(尽管在统计上可能相关的)随机变量。然而,这种方法极易出现过拟合问题,因为它对功能简单性和适应性等基本考虑因素重视不够。为了解决这一缺陷,我们提出了一种正式的数学测量方法,用于评估频率和严重性分布在应用之前的通用性。然后,我们通过计算和比较风险分析中常用的各种概率分布的通用性度量值来说明这种方法。
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A Versatility Measure for Parametric Risk Models
Parametric statistical methods play a central role in analyzing risk through its underlying frequency and severity components. Given the wide availability of numerical algorithms and high-speed computers, researchers and practitioners often model these separate (although possibly statistically dependent) random variables by fitting a large number of parametric probability distributions to historical data and then comparing goodness-of-fit statistics. However, this approach is highly susceptible to problems of overfitting because it gives insufficient weight to fundamental considerations of functional simplicity and adaptability. To address this shortcoming, we propose a formal mathematical measure for assessing the versatility of frequency and severity distributions prior to their application. We then illustrate this approach by computing and comparing values of the versatility measure for a variety of probability distributions commonly used in risk analysis.
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