L. Lee, Chun-Hung Chen, E. P. Chew, Si Zhang, Juxin Li, N. A. Pujowidianto
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引用次数: 3
Abstract
In service industry, various decisions need to be made to design these service systems or improve their performances. In the face of complex systems and many choices, simulation is used to estimate the performance measures of each alternative when analytical expression is too complex or even unavailable. As multiple replications are required for each design, there is a need to efficiently allocate the simulation budget. The Optimal Computing Budget Allocation (OCBA) is an approach that intelligently allocates simulation budget for maximising the desired selection quality in finding the best alternative(s) and has demonstrated its ability in significantly enhancing simulation efficiency. In this paper, we present three latest developments on OCBA for the optimal subset selection, constrained optimisation, and multiobjective optimisation problems. The models, the corresponding asymptotically optimal allocation rules, are provided together with numerical results showing their efficiency. The proposed rules are also further discussed from the large deviations perspective.
期刊介绍:
The advances in distributed computing and networks make it possible to link people, heterogeneous service providers and physically isolated services efficiently and cost-effectively. As the economic dynamics and the complexity of service operations continue to increase, it becomes a critical challenge to leverage information technology in achieving world-class quality and productivity in the production and delivery of physical goods and services. The IJSOI, a fully refereed journal, provides the primary forum for both academic and industry researchers and practitioners to propose and foster discussion on state-of-the-art research and development in the areas of service operations and the role of informatics towards improving their efficiency and competitiveness.