鲁棒分布外随机优化 / Robust Out-of-Distribution Stochastic Optimization
1️⃣ 一句话总结
这篇论文提出了一种新的数据驱动决策框架,它利用相关数据分布来学习一个可调节的、基于核空间的分布不确定性集合,并通过求解一个极小极大优化问题,使得在面对从未见过的数据分布时,依然能做出鲁棒且性能优异的决策。
Data-driven decision-making under uncertainty typically presumes the collection of historical data from an unknown target probability distribution. However, one may have no access to any data from the target distribution prior to decision-making. To address this challenge, we propose robust out-of-distribution stochastic optimization, a novel data-driven framework that effectively utilizes relevant data distributions for robust decision-making under unseen distributions. A key feature of our framework is that all data distributions are assumed to be randomly generated from a meta-distribution over distributions. To describe uncertainty in distribution generation, we propose to learn a data-driven uncertainty set in a reproducing kernel Hilbert space (RKHS) from relevant data distributions, with adjustable conservatism. We then incorporate this set into a min-max stochastic program to derive robust decisions. Notably, under randomness of distribution generation, we establish rigorous out-of-distribution generalization guarantees for the uncertainty set as well as the solution. To ease problem-solving in RKHS, an approximate parametrization with a provably bounded suboptimality and a row generation strategy are presented. Extensive numerical experiments on multi-item newsvendor and portfolio optimization demonstrate the superior out-of-distribution performance of our decision-making framework under unseen data distribution, even when only a small or moderate number of relevant sources are available.
鲁棒分布外随机优化 / Robust Out-of-Distribution Stochastic Optimization
这篇论文提出了一种新的数据驱动决策框架,它利用相关数据分布来学习一个可调节的、基于核空间的分布不确定性集合,并通过求解一个极小极大优化问题,使得在面对从未见过的数据分布时,依然能做出鲁棒且性能优异的决策。
源自 arXiv: 2604.20147