Stochastic Optimization and Learning for Two-Stage Supplier Problems

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Brubach, B., Grammel, N., Harris, D. G., Srinivasan, A., Tsepenekas, L., & Vullikanti, A. (2024). Stochastic optimization and learning for Two-Stage supplier problems. ACM Transactions on Probabilistic Machine Learning., 1(1), 1–20. https://doi.org/10.1145/3604619

Abstract

The main focus of this paper is radius-based (supplier) clustering in the two-stage stochastic setting with recourse, where the inherent stochasticity of the model comes in the form of a budget constraint. In addition to the standard (homogeneous) setting where all clients must be within a distance (R) of the nearest facility, we provide results for the more general problem where the radius demands may be inhomogeneous (i.e., different for each client). We also explore a number of variants where additional constraints are imposed on the first-stage decisions, specifically matroid and multi-knapsack constraints, and provide results for these settings. We derive results for the most general distributional setting, where there is only black-box access to the underlying distribution. To accomplish this, we first develop algorithms for the polynomial scenarios setting; we then employ a novel scenario-discarding variant of the standard Sample Average Approximation (SAA) method, which crucially exploits properties of the restricted-case algorithms. We note that the scenario-discarding modification to the SAA method is necessary in order to optimize over the radius.

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Attribution 4.0 International
https://creativecommons.org/licenses/by/4.0/