Model Efficiency and Uncertainty in Quantile Estimation of Loss Severity Distributions

V. Brazauskas, Sahadeb Upretee
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引用次数: 1

Abstract

Quantiles of probability distributions play a central role in the definition of risk measures (e.g., value-at-risk, conditional tail expectation) which in turn are used to capture the riskiness of the distribution tail. Estimates of risk measures are needed in many practical situations such as in pricing of extreme events, developing reserve estimates, designing risk transfer strategies, and allocating capital. In this paper, we present the empirical nonparametric and two types of parametric estimators of quantiles at various levels. For parametric estimation, we employ the maximum likelihood and percentile-matching approaches. Asymptotic distributions of all the estimators under consideration are derived when data are left-truncated and right-censored, which is a typical loss variable modification in insurance. Then, we construct relative efficiency curves (REC) for all the parametric estimators. Specific examples of such curves are provided for exponential and single-parameter Pareto distributions for a few data truncation and censoring cases. Additionally, using simulated data we examine how wrong quantile estimates can be when one makes incorrect modeling assumptions. The numerical analysis is also supplemented with standard model diagnostics and validation (e.g., quantile-quantile plots, goodness-of-fit tests, information criteria) and presents an example of when those methods can mislead the decision maker. These findings pave the way for further work on RECs with potential for them being developed into an effective diagnostic tool in this context.
损失严重分布分位数估计中的模型效率和不确定性
概率分布的分位数在风险度量(例如,风险值、条件尾部期望)的定义中起着核心作用,这些度量反过来又用于捕获分布尾部的风险。在极端事件的定价、储备估计、风险转移策略的设计和资本分配等许多实际情况中,都需要对风险措施进行估计。本文给出了不同水平上分位数的经验非参数估计量和两类参数估计量。对于参数估计,我们采用最大似然和百分位数匹配方法。在数据左截右截的情况下,得到了所考虑的所有估计量的渐近分布,这是保险中典型的损失变量修正。然后,我们构造了所有参数估计器的相对效率曲线(REC)。对于指数分布和单参数帕累托分布,给出了这种曲线的具体例子。此外,使用模拟数据,我们检查了当一个人做出不正确的建模假设时,错误的分位数估计会有多严重。数值分析还补充了标准模型诊断和验证(例如,分位数-分位数图、拟合优度检验、信息标准),并给出了这些方法何时可能误导决策者的示例。这些发现为进一步开展RECs工作铺平了道路,并有可能将其发展成为这方面的有效诊断工具。
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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