In this chapter we study cellular evolutionary algorithms, a kind of decentralized heuristics, and the importance of their induced exploration/exploitation balance on different problems. It is shown that, by choosing synchronous or asynchronous update policies, the selection pressure, and thus the exploration/exploitation tradeoff, can be influenced directly, without using additional ad hoc parameters. The same effect can be obtained by using synchronous algorithms of different neighborhood-to-topology ratio. All the discussed algorithms are applied to a set of benchmark problems. Our conclusions show that the update methods of the asynchronous versions, as well as the ratio of the decentralized algorithm, have a marked influence on the efficiency and accuracy of the resulting algorithm.
Decentralized Cellular Evolutionary Algorithms
GIACOBINI, Mario Dante Lucio;
2006-01-01
Abstract
In this chapter we study cellular evolutionary algorithms, a kind of decentralized heuristics, and the importance of their induced exploration/exploitation balance on different problems. It is shown that, by choosing synchronous or asynchronous update policies, the selection pressure, and thus the exploration/exploitation tradeoff, can be influenced directly, without using additional ad hoc parameters. The same effect can be obtained by using synchronous algorithms of different neighborhood-to-topology ratio. All the discussed algorithms are applied to a set of benchmark problems. Our conclusions show that the update methods of the asynchronous versions, as well as the ratio of the decentralized algorithm, have a marked influence on the efficiency and accuracy of the resulting algorithm.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.