Multi-particle Simulated Annealing
Orcun Molvalioglu (),
Zelda B. Zabinsky () and
Wolf Kohn ()
Additional contact information
Orcun Molvalioglu: University of Washington
Zelda B. Zabinsky: University of Washington
Wolf Kohn: Clearsight Systems Inc.
A chapter in Models and Algorithms for Global Optimization, 2007, pp 215-222 from Springer
Abstract:
Summary Whereas genetic algorithms and evolutionary methods involve a population of points, simulated annealing (SA) can be interpreted as a random walk of a single point inside a feasible set. The sequence of locations visited by SA is a consequence of the Markov Chain Monte Carlo sampler. Instead of running SA with multiple independent runs, in this chapter we study a multi-particle version of simulated annealing in which the population of points interact with each other. We present numerical results that demonstrate the benefits of these interactions on algorithm performance.
Date: 2007
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Persistent link: https://EconPapers.repec.org/RePEc:spr:spochp:978-0-387-36721-7_14
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DOI: 10.1007/978-0-387-36721-7_14
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