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First Results on Formal Comparison of Several Stochastic Optimization Algorithms
Washington, D.C. April 16-April 22
DOI Bookmark: http://doi.ieeecomputersociety.org/10.1109/SIMSYM.2000.84492433rd Annual Simulation Symposium
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James C. Spall, Johns Hopkins University
Stacy D. Hill, Johns Hopkins University
David R. Stark, Johns Hopkins University
This paper is a first step to formal comparisons of several leading optimization algorithms, establishing guidance to practitioners for when to use or not use a particular method. The focus in this paper is four general algorithm forms: random search, simultaneous perturbation stochastic approximation, simulated annealing, and evolutionary computation. We summarize the available theoretical results on rates of convergence for the four algorithm forms and then use the theoretical results to draw some preliminary conclusions on the relative efficiency. Our aim is to sort out some of the competing claims of efficiency and to suggest a structure for comparison that is more general and transferable than the usual problem-specific numerical studies. Much work remains to be done to generalize and extend the results to problems and algorithms of the type frequently seen in practice.
Citation:
James C. Spall, Stacy D. Hill, David R. Stark, "First Results on Formal Comparison of Several Stochastic Optimization Algorithms," ss, pp.259, 33rd Annual Simulation Symposium, 2000
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