The goal of this paper is to develop methodology for the systematic analysis of asymptotic statistical properties of data driven DRO formulations based on their corresponding non-DRO counterparts. We illustrate our approach in various settings, including both phi-divergence and Wasserstein uncertainty sets. Different types of asymptotic behaviors are obtained depending on the rate at which the uncertainty radius decreases to zero as a function of the sample size and the geometry of the uncertainty sets.
翻译:本文旨在开发方法,通过对应的**非鲁棒**模型系统地分析数据驱动的DRO模型的渐近统计特性。我们将我们的方法应用于不同的场景,包括phi-散度和Wasserstein不确定集。根据不确定半径随样本量而减小的速度和不确定性集合的几何结构,我们得到了不同类型的渐近行为。