A COMPARISON OF EVOLUTIONARY AND COEVOLUTIONARY SEARCH
Author(s) -
Ludo Pagie,
Melanie Mitchell
Publication year - 2002
Publication title -
international journal of computational intelligence and applications
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.283
H-Index - 17
eISSN - 1757-5885
pISSN - 1469-0268
DOI - 10.1142/s1469026802000427
Subject(s) - generality , computer science , coevolution , quality (philosophy) , artificial intelligence , population , machine learning , evolutionary algorithm , contrast (vision) , evolutionary biology , biology , psychology , philosophy , demography , epistemology , sociology , psychotherapist
Previous work on coevolutionary search has demonstrated both successful and unsuccessful applications. As a step in explaining what factors lead to success or failure, we present a comparative study of an evolutionary and a coevolutionary search model. In the latter model, strategies for solving a problem coevolve with training cases. We find that the coevolutionary model has a relatively large effi- cacy: 86 out of 100 (86%) of the simulations produce high quality strategies. In contrast, the evolutionary model has a very low efficacy: a high quality strategy is found in only two out of 100 runs (2%). We show that the increased efficacy in the coevolutionary model results from the direct exploitation of low quality strategies by the population of training cases. We also present evidence that the generality of the high-quality strategies can suffer as a result of this same exploitation.
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