风险度量
一致性风险度量
预期短缺
尾部风险
动态风险度量
数学
凸性
度量(数据仓库)
分位数
卷积(计算机科学)
计量经济学
风险价值
风险管理
光谱风险度量
帕累托原理
下行风险
数学优化
计算机科学
经济
文件夹
管理
数据库
机器学习
人工神经网络
金融经济学
作者
Fangda Liu,Tiantian Mao,Ruodu Wang,Linxiao Wei
标识
DOI:10.1287/moor.2021.1217
摘要
Inspired by the recent developments in risk sharing problems for the value at risk (VaR), the expected shortfall (ES), and the range value at risk (RVaR), we study the optimization of risk sharing for general tail risk measures. Explicit formulas of the inf-convolution and Pareto-optimal allocations are obtained in the case of a mixed collection of left and right VaRs, and in that of a VaR and another tail risk measure. The inf-convolution of tail risk measures is shown to be a tail risk measure with an aggregated tail parameter, a phenomenon very similar to the cases of VaR, ES, and RVaR. Optimal allocations are obtained in the settings of elliptical models and model uncertainty. In particular, several results are established for tail risk measures in the presence of model uncertainty, which may be of independent interest outside the framework of risk sharing. The technical conclusions are quite general without assuming any form of convexity of the tail risk measures. Our analysis generalizes in several directions the recent literature on quantile-based risk sharing.
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