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Robust measurement of (heavy-tailed) risks: Theory and implementation

机译:稳健的(重尾)风险度量:理论与实现

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Every model presents an approximation of reality and thus modeling inevitably implies model risk. We quantify model risk in a non-parametric way, i.e., in terms of the divergence from a so-called nominal model. Worst-case risk is defined as the maximal risk among all models within a given divergence ball. We derive several new results on how different divergence measures affect the worst case. Moreover, we present a novel, empirical way built on model confidence sets (MCS) for choosing the radius of the divergence ball around the nominal model, i.e., for calibrating the amount of model risk. We demonstrate the implications of heavy-tailed risks for the choice of the divergence measure and the empirical divergence estimation. For heavy-tailed risks, the simulation of the worst-case distribution is numerically intricate. We present a Sequential Monte Carlo algorithm which is suitable for this task. An extended practical example, assessing the robustness of a hedging strategy, illustrates our approach. (C) 2015 Elsevier B.V. All rights reserved.
机译:每个模型都代表现实的近似,因此建模不可避免地暗含了模型风险。我们以非参数方式量化模型风险,即根据与所谓名义模型的差异来量化。最坏情况的风险定义为给定偏差球内所有模型之间的最大风险。我们得出了关于不同的分歧措施如何影响最坏情况的几个新结果。此外,我们提出了一种基于模型置信度(MCS)的新颖的经验方法,用于选择名义模型周围发散球的半径,即用于校准模型风险的数量。我们证明了重尾风险对差异度量和经验差异估计的选择的影响。对于重尾风险,最坏情况分布的模拟在数值上是复杂的。我们提出一种适合此任务的顺序蒙特卡洛算法。一个扩展的实际例子,评估对冲策略的稳健性,说明了我们的方法。 (C)2015 Elsevier B.V.保留所有权利。

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