Title :
Tutorial: Optimization via simulation with Bayesian statistics and dynamic programming
Author_Institution :
Cornell Univ., Ithaca, NY, USA
Abstract :
Bayesian statistics comprises a powerful set of methods for analyzing simulated systems. Combined with dynamic programming and other methods for sequential decision making under uncertainty, Bayesian methods have been used to design algorithms for finding the best of several simulated systems. When the dynamic program can be solved exactly, these algorithms have optimal average-case performance. In other situations, this dynamic programming analysis supports the development of approximate methods with sub-optimal but nevertheless good average-case performance. These methods with good average-case performance are particularly useful when the cost of simulation prevents the use of procedures with worst-case statistical performance guarantees. We provide an overview of Bayesian methods used for selecting the best, providing an in-depth treatment of the simpler case of ranking and selection with independent priors appropriate for smaller-scale problems, and then discussing how these same ideas can be applied to correlated priors appropriate for large-scale problems.
Keywords :
Bayes methods; decision making; dynamic programming; simulation; statistics; Bayesian methods; Bayesian statistics; approximate methods; dynamic programming analysis; large-scale problems; optimal average-case performance; optimization via simulation; ranking; sequential decision making; simulation cost; smaller-scale problems; worst-case statistical performance guarantees; Analytical models; Bayesian methods; Dynamic programming; Heuristic algorithms; Optimization; Probability distribution; Tutorials;
Conference_Titel :
Simulation Conference (WSC), Proceedings of the 2012 Winter
Conference_Location :
Berlin
Print_ISBN :
978-1-4673-4779-2
Electronic_ISBN :
0891-7736
DOI :
10.1109/WSC.2012.6465237