Decision Making under the Exponential Family: Distributionally Robust Optimisation with Bayesian Ambiguity Sets

November 25, 2024 ยท Declared Dead ยท ๐Ÿ› International Conference on Machine Learning

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Authors Charita Dellaporta, Patrick O'Hara, Theodoros Damoulas arXiv ID 2411.16829 Category cs.LG: Machine Learning Cross-listed math.OC Citations 3 Venue International Conference on Machine Learning Last Checked 4 months ago
Abstract
Decision making under uncertainty is challenging as the data-generating process (DGP) is often unknown. Bayesian inference proceeds by estimating the DGP through posterior beliefs on the model's parameters. However, minimising the expected risk under these beliefs can lead to suboptimal decisions due to model uncertainty or limited, noisy observations. To address this, we introduce Distributionally Robust Optimisation with Bayesian Ambiguity Sets (DRO-BAS) which hedges against model uncertainty by optimising the worst-case risk over a posterior-informed ambiguity set. We provide two such sets, based on posterior expectations (DRO-BAS(PE)) or posterior predictives (DRO-BAS(PP)) and prove that both admit, under conditions, strong dual formulations leading to efficient single-stage stochastic programs which are solved with a sample average approximation. For DRO-BAS(PE) this covers all conjugate exponential family members while for DRO-BAS(PP) this is shown under conditions on the predictive's moment generating function. Our DRO-BAS formulations outperform existing Bayesian DRO on the Newsvendor problem and achieve faster solve times with comparable robustness on the Portfolio problem.
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