While solutions of Distributionally Robust Optimization (DRO) problems can sometimes have a higher out-of-sample expected reward than the Sample Average Approximation (SAA), there is no guarantee. In this paper, we introduce the class of Distributionally Optimistic Optimization (DOO) models, and show that it is always possible to "beat" SAA out-of-sample if we consider not just worst-case (DRO) models but also best-case (DOO) ones. We also show, however, that this comes at a cost: Optimistic solutions are more sensitive to model error than either worst-case or SAA optimizers, and hence are less robust.
翻译:虽然分配式强力优化(DRO)解决方案有时可能会得到比样本平均近似(SAA)高的超出样数的预期回报,但无法保证。 在本文中,我们引入了分配式优化优化(DOO)模式,并表明如果我们不仅考虑最坏情况(DRO)模式,而且考虑最佳情况(DO)模式,也考虑最佳情况(DOO)模式,就总是有可能“击败”SAA。 但我们也表明,这样做是有代价的:最乐观的解决方案对模型错误比最坏情况或SAAA优化者更敏感,因此不那么强。