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State-of-the-Art-Survey—Stochastic Programming: Computation and Applications
240
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0
References
1997
Year
Mathematical ProgrammingEngineeringData ScienceStochastic OptimizationUncertainty QuantificationStochastic SystemManagementState-of-the-art-survey—stochastic ProgrammingOptimal-decision ModelsUncertainty FormalismDecision TheoryUncertainty ModelingRobust OptimizationStochastic Programming ModelsUncertain ConsequencesOperations Research
Although decisions frequently have uncertain consequences, optimal-decision models often replace those uncertainties with averages or best estimates. Limited computational capability may have motivated this practice in the past. Recent computational advances have, however, greatly expanded the range of optimal-decision models with explicit consideration of uncertainties. This article describes the basic methodology for these stochastic programming models, recent developments in computation, and several practical applications.