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PPSN
2004
Springer

Learning Probabilistic Tree Grammars for Genetic Programming

13 years 9 months ago
Learning Probabilistic Tree Grammars for Genetic Programming
Genetic Programming (GP) provides evolutionary methods for problems with tree representations. A recent development in Genetic Algorithms (GAs) has led to principled algorithms called Estimation–of– Distribution Algorithms (EDAs). EDAs identify and exploit structural features of a problem’s structure during optimization. Here, we investigate the use of a specific EDA for GP. We develop a probabilistic model that employs transformations of production rules in a context–free grammar to represent local structures. The results of performing experiments on two benchmark problems demonstrate the feasibility of the approach.
Peter A. N. Bosman, Edwin D. de Jong
Added 02 Jul 2010
Updated 02 Jul 2010
Type Conference
Year 2004
Where PPSN
Authors Peter A. N. Bosman, Edwin D. de Jong
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