利用条件风险测度估计对称广义双曲族的损失严重尾

Katja Ignatieva, Z. Landsman
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引用次数: 3

摘要

本文解决了保险公司和风险管理部门面临的主要挑战之一,即如何制定衡量基础投资组合风险的标准化框架,特别是如何从历史数据中最可靠地估计损失严重程度分布。本文研究了对称广义双曲分布族的尾部条件期望和尾部方差溢价风险度量。与广泛使用的风险价值(VaR)度量相比,TCE满足“一致”风险度量的要求,考虑了分布尾部的预期损失,而TVP则考虑了尾部的变异性,提供了最保守的风险估计。我们研究了SGH分布类中的各种分布,结果证明这些分布很好地拟合了金融数据回报,并允许为TCE和TVP风险度量提供明确的公式。同时,我们获得了大分位数水平下TCE和TVP风险度量的渐近行为。此外,我们将分析扩展到多变量框架,允许多变量分布来建模相关风险的组合,并演示如何将TCE分解为单个组件,代表单个风险对总投资组合风险的贡献。
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Estimating the Tails of Loss Severity via Conditional Risk Measures for the Family of Symmetric Generalised Hyperbolic Family
This paper addresses one of the main challenges faced by insurance companies and risk management departments, namely, how to develop standardised framework for measuring risks of underlying portfolios and in particular, how to most reliably estimate loss severity distribution from historical data. This paper investigates tail conditional expectation (TCE) and tail variance premium (TVP) risk measures for the family of symmetric generalised hyperbolic (SGH) distributions. In contrast to a widely used Value-at-Risk (VaR) measure, TCE satisfies the requirement of the “coherent” risk measure taking into account the expected loss in the tail of the distribution while TVP incorporates variability in the tail, providing the most conservative estimator of risk. We examine various distributions from the class of SGH distributions, which turn out to fit well financial data returns and allow for explicit formulas for TCE and TVP risk measures. In parallel, we obtain asymptotic behaviour for TCE and TVP risk measures for large quantile levels. Furthermore, we extend our analysis to the multivariate framework, allowing multivariate distributions to model combinations of correlated risks, and demonstrate how TCE can be decomposed into individual components, representing contribution of individual risks to the aggregate portfolio risk.
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