Selecting a Good Stochastic System for the Large Number of Alternatives |
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Authors: | Mohammad H. Almomani Rosmanjawati Abdul Rahman |
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Affiliation: | 1. School of Mathematical Sciences , Universiti Sains Malaysia , Penang , Malaysia mh_momani@yahoo.com;3. School of Mathematical Sciences , Universiti Sains Malaysia , Penang , Malaysia |
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Abstract: | In this article, we present the problem of selecting a good stochastic system with high probability and minimum total simulation cost when the number of alternatives is very large. We propose a sequential approach that starts with the Ordinal Optimization procedure to select a subset that overlaps with the set of the actual best m% systems with high probability. Then we use Optimal Computing Budget Allocation to allocate the available computing budget in a way that maximizes the Probability of Correct Selection. This is followed by a Subset Selection procedure to get a smaller subset that contains the best system among the subset that is selected before. Finally, the Indifference-Zone procedure is used to select the best system among the survivors in the previous stage. The numerical test involved with all these procedures shows the results for selecting a good stochastic system with high probability and a minimum number of simulation samples, when the number of alternatives is large. The results also show that the proposed approach is able to identify a good system in a very short simulation time. |
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Keywords: | Indifference-zone Optimal computing budget allocation Ordinal optimization Ranking and selection Simulation optimization Subset selection |
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