Empirical Tail Risk Management with Model-Based Annealing Random Search

Qi Fan, K. S. Tan, Jinggong Zhang
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Abstract

Tail risk measures such as Value at Risk (VaR) and Conditional Value at Risk (CVaR) are popularly accepted criteria for financial risk management, but are usually difficult to optimize. Especially for VaR, it generally leads to a non-convex NP-hard problem which is computationally challenging. In this paper we propose the use of model-based annealing random search (MARS) method in tail risk optimization problems. The MARS, which is a gradient-free and flexible method, can widely be applied to solving many financial and insurance problems under mild mathematical conditions. We use a weather index insurance design problem with tail risk measures including VaR, CVaR and Entropic Value at Risk (EVaR) as the objective function to demonstrate the viability and effectiveness of MARS. We conduct an empirical analysis in which we use a set of weather variables to hedge against corn production losses in Illinois. Numerical results show that the proposed optimization scheme effectively helps corn producers to manage their tail risk.
基于模型退火随机搜索的实证尾部风险管理
尾部风险度量,如风险价值(VaR)和条件风险价值(CVaR)是金融风险管理中普遍接受的标准,但通常难以优化。特别是对于VaR,它通常会导致非凸np困难问题,这在计算上具有挑战性。本文提出了基于模型的退火随机搜索(MARS)方法在尾部风险优化问题中的应用。MARS是一种无梯度且灵活的方法,可广泛应用于在温和的数学条件下解决许多金融和保险问题。我们用一个包含VaR、CVaR和风险熵值(EVaR)等尾部风险度量的天气指数保险设计问题作为目标函数来证明MARS的可行性和有效性。我们进行了一项实证分析,其中我们使用一组天气变量来对冲伊利诺伊州的玉米生产损失。数值结果表明,所提出的优化方案有效地帮助玉米生产者管理尾部风险。
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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