2023
DOI: 10.3390/a16100479
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Problem-Driven Scenario Generation for Stochastic Programming Problems: A Survey

Xiaochen Chou,
Enza Messina

Abstract: Stochastic Programming is a powerful framework that addresses decision-making under uncertainties, which is a frequent occurrence in real-world problems. To effectively solve Stochastic Programming problems, scenario generation is one of the common practices that organizes realizations of stochastic processes with finite discrete distributions, which enables the use of mathematical programming models of the original problem. The quality of solutions is significantly influenced by the scenarios employed, necess… Show more

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