In recent years, two prominent paradigms have shaped distributionally robust optimization (DRO), modeling distributional ambiguity through $φ$-divergences and Wasserstein distances, respectively. While the former focuses on ambiguity in likelihood ratios, the latter emphasizes ambiguity in outcomes and uses a transportation cost function to capture geometric structure in the outcome space. This paper proposes a unified framework that bridges these approaches by leveraging optimal transport (OT) with conditional moment constraints. Our formulation enables adversarial distributions to jointly perturb likelihood ratios and outcomes, yielding a generalized OT coupling between the nominal and perturbed distributions. We further establish key duality results and develop tractable reformulations that highlight the practical power of our unified approach.
翻译:近年来,分布鲁棒优化领域形成了两大主流范式:分别通过φ-散度和Wasserstein距离来建模分布不确定性。前者侧重于似然比的不确定性,后者则强调结果的不确定性,并利用传输代价函数捕捉结果空间的几何结构。本文提出一个统一框架,通过引入带条件矩约束的最优传输理论来桥接这两种方法。我们的建模允许对抗分布同时扰动似然比和结果,从而在标称分布与扰动分布之间建立广义最优传输耦合。我们进一步建立了关键的对偶理论,并推导出易于处理的等价重构形式,从而彰显这一统一方法的实用价值。