In many operational settings, decision-makers must commit to actions before uncertainty resolves, but existing optimization tools rarely quantify how consistently a chosen decision remains optimal across plausible scenarios. This paper introduces CREDO -- Conformalized Risk Estimation for Decision Optimization, a distribution-free framework that quantifies the probability that a prescribed decision remains (near-)optimal across realizations of uncertainty. CREDO reformulates decision risk through the inverse feasible region -- the set of outcomes under which a decision is optimal -- and estimates its probability using inner approximations constructed from conformal prediction balls generated by a conditional generative model. This approach yields finite-sample, distribution-free lower bounds on the probability of decision optimality. The framework is model-agnostic and broadly applicable across a wide range of optimization problems. Extensive numerical experiments demonstrate that CREDO provides accurate, efficient, and reliable evaluations of decision optimality across various optimization settings.
翻译:在许多实际应用场景中,决策者必须在不确定性完全显现之前确定行动方案,但现有的优化工具很少能量化所选决策在多种可能情境下保持最优的一致性程度。本文提出CREDO(保形化决策优化风险估计)——一种无需分布假设的框架,用于量化指定决策在不确定性实现过程中保持(近似)最优的概率。CREDO通过逆可行域(即决策保持最优的结果集合)重构决策风险,并利用条件生成模型生成的保形预测球构造的内逼近来估计其概率。该方法能够获得决策最优性概率的有限样本、无分布下界。该框架与模型无关,可广泛应用于各类优化问题。大量数值实验表明,CREDO能在多种优化场景下提供准确、高效且可靠的决策最优性评估。