Enhancing Stochastic Search Performance by Value-Biased Randomization of Heuristics
Journal Article, Journal of Heuristics, Vol. 11, No. 1, pp. 5 - 34, January, 2005
Abstract
Stochastic search algorithms are often robust, scalable problem solvers. In this paper, we concern ourselves with the class of stochastic search algorithms called stochastic sampling. Randomization in such a search framework can be an efiective means of expanding search around a stochastic neighborhood of a strong domain heuristic. Speciflcally, we show that a value-biased approach can be more efiective than the rank-biased approach of the heuristic-biased stochastic sampling algorithm. We also illustrate the efiectiveness of value-biasing the starting conflgu- rations of a local hill-climber. We use the weighted tardiness scheduling problem to evaluate our approach.
BibTeX
@article{Cicirello-2005-120457,author = {V. Cicirello and S. F. Smith},
title = {Enhancing Stochastic Search Performance by Value-Biased Randomization of Heuristics},
journal = {Journal of Heuristics},
year = {2005},
month = {January},
volume = {11},
number = {1},
pages = {5 - 34},
}
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