风险度量
模棱两可
数学
不确定度量化
下确界和上确界
一致性(知识库)
数学优化
凸性
时间范围
一致性风险度量
敏感性分析
集合(抽象数据类型)
度量(数据仓库)
计算机科学
不确定度分析
数据挖掘
统计
经济
离散数学
文件夹
金融经济学
程序设计语言
作者
Marlon Ruoso Moresco,Mélina Mailhot,Silvana M. Pesenti
标识
DOI:10.1287/moor.2023.0267
摘要
We introduce a framework for quantifying propagation of uncertainty arising in a dynamic setting. Specifically, we define dynamic uncertainty sets designed explicitly for discrete stochastic processes over a finite time horizon. These dynamic uncertainty sets capture the uncertainty surrounding stochastic processes and models, accounting for factors such as distributional ambiguity. Examples of uncertainty sets include those induced by the Wasserstein distance and f-divergences. We further define dynamic robust risk measures as the supremum of all candidates’ risks within the uncertainty set. In an axiomatic way, we discuss conditions on the uncertainty sets that lead to well-known properties of dynamic robust risk measures, such as convexity and coherence. Furthermore, we discuss the necessary and sufficient properties of dynamic uncertainty sets that lead to time-consistencies of dynamic robust risk measures. We find that uncertainty sets stemming from f-divergences lead to strong time-consistency whereas the Wasserstein distance results in a new time-consistent notion of weak recursiveness. Moreover, we show that a dynamic robust risk measure is strong time-consistent or weak recursive if and only if it admits a recursive representation of one-step conditional robust risk measures arising from static uncertainty sets. Funding: M. Mailhot and S. M. Pesenti acknowledge support from the Canadian Statistical Sciences Institute (CANSSI) and from the Natural Sciences and Engineering Research Council of Canada [Grants RGPIN-2015-05447, DGECR-2020-00333, and RGPIN-2020-04289]. M. R. Moresco thanks the Horizon Postdoctoral Fellowship for the support.
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