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A statistical perspective on linear programs with uncertain parameters

L. Jeff Hong, Henry Lam

Research output: Chapters, Conference Papers, Creative and Literary WorksRGC 32 - Refereed conference paper (with host publication)peer-review

Abstract

We consider linear programs where some parameters in the objective functions are unknown but data are available. For a risk-averse modeler, the solutions of these linear programs should be picked in a way that can perform well for a range of likely scenarios inferred from the data. The conventional approach uses robust optimization. Taking the optimality gap as our loss criterion, we argue that this approach can be high-risk, in the sense that the optimality gap can be large with significant probability. We then propose two computationally tractable alternatives: The first uses bootstrap aggregation, or so-called bagging in the statistical learning literature, while the second uses Bayes estimator in the decision-theoretic framework. Both are simulation-based schemes that aim to improve the distributional behavior of the optimality gap by reducing its frequency of hitting large values.
Original languageEnglish
Title of host publicationProceedings - Winter Simulation Conference
PublisherIEEE
Pages3690-3701
Volume2016-February
ISBN (Print)9781467397438
DOIs
Publication statusPublished - 16 Feb 2016
EventWinter Simulation Conference, WSC 2015 - Huntington Beach, United States
Duration: 6 Dec 20159 Dec 2015

Publication series

Name
Volume2016-February
ISSN (Print)0891-7736

Conference

ConferenceWinter Simulation Conference, WSC 2015
PlaceUnited States
CityHuntington Beach
Period6/12/159/12/15

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