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arxiv: 2410.08863 · v1 · pith:P5OZFQS5 · submitted 2024-10-11 · math.OC

Problem-Driven Scenario Reduction and Scenario Approximation for Robust Optimization

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classification math.OC
keywords uncertaintyrobustapproximationbetterframeworkoptimizationpossibleprevious
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In robust optimization, we would like to find a solution that is immunized against all scenarios that are modeled in an uncertainty set. Which scenarios to include in such a set is therefore of central importance for the tractability of the robust model and practical usefulness of the resulting solution. We consider problems with a discrete uncertainty set affecting only the objective function. Our aim is reduce the size of the uncertainty set, while staying as true as possible to the original robust problem, measured by an approximation guarantee. Previous reduction approaches ignored the structure of the set of feasible solutions in this process. We show how to achieve better uncertainty sets by taking into account what solutions are possible, providing a theoretical framework and models to this end. In computational experiments, we note that our new framework achieves better uncertainty sets than previous methods or a simple K-means approach.

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Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Learning Scenario Reduction for Two-Stage Robust Optimization with Discrete Uncertainty

    cs.AI 2026-05 conditional novelty 7.0

    NeurPRISE trains a GNN-Transformer via imitation learning to mimic a lookahead heuristic for scenario reduction in 2RO, delivering 7-200x speedups with competitive regret on three test problems and zero-shot generalization.