We present a novel class of ambiguity sets for distributionally robust optimization (DRO). These ambiguity sets, called cost-aware ambiguity sets, are defined as halfspaces which depend on the cost function evaluated at an independent estimate of the optimal solution, thus excluding only those distributions that are expected to have significant impact on the obtained worst-case cost. We show that the resulting DRO method provides both a high-confidence upper bound and a consistent estimator of the out-of-sample expected cost, and demonstrate empirically that it results in less conservative solutions compared to divergence-based ambiguity sets.
翻译:利用成本感知的模糊集进行分布鲁棒优化
我们提出了一种新的模糊集类别,用于进行分布鲁棒优化(DRO)。这些称为成本感知模糊集的模糊集是半空间,其取决于在独立估计的最优解处计算的成本函数,因此仅排除那些预计对得到的最坏情况成本产生重大影响的分布。我们证明了得到的DRO方法提供了高置信上限和预测样本外期望成本的一致估计,并通过经验证明,其结果相对于基于发散的模糊集来说更少保守。