Multilevel and Tail Risk Management

Lynda Khalaf, A. Leccadito, G. Urga
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引用次数: 2

Abstract

We introduce backtesting methods to assess Value-at-Risk (VaR) and Expected Shortfall (ES) that require no more than desktop VaR violations as inputs. Maintaining an integrated VaR perspective, our methodology relies on multiple testing to combine evidence on the frequency and dynamic evolution of violations, and to capture more information than a single threshold can provide about the magnitude of violations. Contributions include a formal finite sample analysis of the joint distribution of multi-threshold violations, and limiting results that unify discrete and continuous definitions of cumulative violations across thresholds. Simulation studies demonstrate the power advantages of the proposed tests, particularly with small samples and when underlying models are unavailable to assessors. Results also reinforce the usefulness of CaViaR approaches not just for VaR but also as ES backtests. Empirically, we assess desktop data by Bloomberg on exchange traded funds. We find that tail risk is not adequately reflected via a wide spectrum of models and available measures. Results provide useful prescriptions for empirical practice and, more generally, reinforce the recent arguments in favor of combined tests and forecasts in tail risk management.
多层次和尾部风险管理
我们引入回溯测试方法来评估风险价值(VaR)和预期缺口(ES),这些方法只需要桌面VaR违规作为输入。维护一个集成的VaR视角,我们的方法依赖于多个测试来结合关于违规频率和动态演变的证据,并捕获比单个阈值所能提供的关于违规程度的更多信息。贡献包括多阈值违规联合分布的正式有限样本分析,以及统一跨阈值累积违规的离散和连续定义的限制性结果。仿真研究证明了所建议的测试的强大优势,特别是在小样本和评估人员无法获得基础模型的情况下。结果还强化了CaViaR方法的实用性,不仅适用于VaR,也适用于ES回测。经验上,我们评估了彭博交易所交易基金的桌面数据。我们发现,尾部风险没有通过广泛的模型和可用的措施得到充分反映。结果为经验实践提供了有用的处方,更一般地说,加强了最近在尾部风险管理中支持联合测试和预测的论点。
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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