Publication | Closed Access
Making a Case for Robust Optimization Models
124
Citations
12
References
1997
Year
Piecewise LinearizationRobust Optimization SearchesEngineeringLinear OptimizationStochastic OptimizationUncertainty QuantificationOptimization ProblemRisk ManagementManagementComputer ScienceDecision TheoryRobust Optimization ModelsAnticipated UncertaintyUtility-driven ModelRobust DesignRobust OptimizationRisk-averse OptimizationOperations Research
Robust optimization searches for recommendations that are relatively immune to anticipated uncertainty in the problem parameters. Stochasticities are addressed via a set of discrete scenarios. This paper presents applications in which the traditional stochastic linear program fails to identify a robust solution—despite the presence of a cheap robust point. Limitations of piecewise linearization are discussed. We argue that a concave utility function should be incorporated in a model whenever the decision maker is risk averse. Examples are taken from telecommunications and financial planning.
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