2023
DOI: 10.35335/emod.v17i1.70
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Robust learning and optimization in distributionally robust stochastic variational inequalities under uncertainty

Hengki Tamando Sihotang,
Patrisius Michaud Felix Marsoit,
Patrisia Teresa Marsoit

Abstract: Robust learning and optimization in distributionally robust stochastic variational inequalities under uncertainty is a crucial research area that addresses the challenge of making optimal decisions in the presence of distributional ambiguity. This research explores the development of methodologies and algorithms to handle uncertainty in variational inequalities, incorporating a distributionally robust framework that considers a range of possible distributions or uncertainty sets. By minimizing the worst-case e… Show more

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