论向量值风险度量的可分离性

Çağın Ararat, Zachary Feinstein
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摘要

文献中已经考虑了具有交易成本和金融网络的多资产市场中随机向量的风险度量。虽然集值风险度量理论提供了一个公理框架,用于为随机向量分配其所有资本要求或分配向量的集合,但实际决策过程需要一个额外的规则来从这个集合中进行选择。在本文中,我们通过一个类似的公理表来定义矢量值风险度量,并证明在凸和低半连续的情况下,这种函数总是忽略输入随机矢量的依赖结构。我们还证明,只要不还原为向量值函数,集合值风险度量就不存在这个问题。最后,我们证明我们的结果还可以推广到条件设置。这些结果表明,凸向量值风险度量不适合为广泛的金融应用(包括系统性风险度量)定义资本分配规则。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the Separability of Vector-Valued Risk Measures
Risk measures for random vectors have been considered in multi-asset markets with transaction costs and financial networks in the literature. While the theory of set-valued risk measures provide an axiomatic framework for assigning to a random vector its set of all capital requirements or allocation vectors, the actual decision-making process requires an additional rule to select from this set. In this paper, we define vector-valued risk measures by an analogous list of axioms and show that, in the convex and lower semicontinuous case, such functionals always ignore the dependence structures of the input random vectors. We also show that set-valued risk measures do not have this issue as long as they do not reduce to a vector-valued functional. Finally, we demonstrate that our results also generalize to the conditional setting. These results imply that convex vector-valued risk measures are not suitable for defining capital allocation rules for a wide range of financial applications including systemic risk measures.
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