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Title: Optimized scenario reduction : solving large-scale stochastic programs with quality guarantees
Authors: Zhang, W 
Wang, K
Jacquillat, A
Wang, S 
Issue Date: Jul-2023
Source: INFORMS journal on computing, July-Aug. 2023, v. 35, no. 4, p. 886-908
Abstract: Stochastic programming involves large-scale optimization with exponentially many scenarios. This paper proposes an optimization-based scenario reduction approach to generate high-quality solutions and tight lower bounds by only solving small-scale instances, with a limited number of scenarios. First, we formulate a scenario subset selection model that optimizes the recourse approximation over a pool of solutions. We provide a theoretical justification of our formulation, and a tailored heuristic to solve it. Second, we propose a scenario assortment optimization approach to compute a lower bound—hence, an optimality gap—by relaxing nonanticipativity constraints across scenario “bundles.” To solve it, we design a new column-evaluation-and-generation algorithm, which provides a generalizable method for optimization problems featuring many decision variables and hard-to-estimate objective parameters. We test our approach on stochastic programs with continuous and mixed-integer recourse. Results show that (i) our scenario reduction method dominates scenario reduction benchmarks, (ii) our scenario assortment optimization, combined with column-evaluation-and-generation, yields tight lower bounds, and (iii) our overall approach results in stronger solutions, tighter lower bounds, and faster computational times than state-of-the-art stochastic programming algorithms.
Keywords: Stochastic programming
Scenario reduction
Column evaluation and generation
Publisher: INFORMS
Journal: INFORMS journal on computing 
ISSN: 1091-9856
EISSN: 1526-5528
DOI: 10.1287/ijoc.2023.1295
Rights: © 2023 INFORMS
This is the accepted manuscript of the following article: Zhang, W., et al. (2023). "Optimized Scenario Reduction: Solving Large-Scale Stochastic Programs with Quality Guarantees." INFORMS Journal on Computing 35(4): 886-908, which has been published in final form at https://doi.org/10.1287/ijoc.2023.1295.
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