2020
DOI: 10.1287/mnsc.2018.3213
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Distributionally Robust Selection of the Best

Abstract: Specifying a proper input distribution is often a challenging task in simulation modeling. In practice, there may be multiple plausible distributions that can fit the input data reasonably well, especially when the data volume is not large. In this paper, we consider the problem of selecting the best from a finite set of simulated alternatives, in the presence of such input uncertainty. We model such uncertainty by an ambiguity set consisting of a finite number of plausible input distributions, and aim to sele… Show more

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Cited by 25 publications
(26 citation statements)
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References 48 publications
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“…By doing so, the problem scale is reduced from km to k + m − 1, and thus the computing efficiency has the potential to be substantially improved. This observation is consistent with the selection rules for unconstrained robust R&S (Fan et al, in press; Gao, Xiao, et al, ).…”
Section: Asymptotic Optimality Conditionsupporting
confidence: 88%
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“…By doing so, the problem scale is reduced from km to k + m − 1, and thus the computing efficiency has the potential to be substantially improved. This observation is consistent with the selection rules for unconstrained robust R&S (Fan et al, in press; Gao, Xiao, et al, ).…”
Section: Asymptotic Optimality Conditionsupporting
confidence: 88%
“…Due to the lack of complete knowledge, P is usually estimated from the information available in order to drive the simulation model, which leads to some degree of uncertainty. In order to account for this uncertainty in our formulation, we adopt a similar approach as in Fan et al (in press) and assume that for each design in X, the set of possible distributions of ξ is identical and contains a finite number of scenarios, denoted as P=P1P2Pβ and called the uncertainty set. This set incorporates the uncertainty from both the input distributions and their associated parameters.…”
Section: Preliminariesmentioning
confidence: 99%
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“…Particularly, the RSB formulation includes all the possible scenarios of input distribution into an ambiguity set and then takes a robust perspective to define the best alternative with respect to the worst-case mean performance measures over the ambiguity set. Fan et al (2020) further improved their work and proposed both two-stage and sequential procedures that can achieve the user-specified PCS. These RSB procedures are also tested by a healthcare queueing system with both synthetic and real hospital data.…”
Section: Rands With Input Uncertaintymentioning
confidence: 99%