Authors
Erik Hemberg, Conor Gilligan, Michael O’Neill, Anthony Brabazon
Publication date
2007
Conference
Genetic Programming: 10th European Conference, EuroGP 2007, Valencia, Spain, April 11-13, 2007. Proceedings 10
Pages
1-11
Publisher
Springer Berlin Heidelberg
Description
The ability of Genetic Programming to scale to problems of increasing difficulty operates on the premise that it is possible to capture regularities that exist in a problem environment by decomposition of the problem into a hierarchy of modules. As computer scientists and more generally as humans we tend to adopt a similar divide-and-conquer strategy in our problem solving. In this paper we consider the adoption of such a strategy for Genetic Algorithms. By adopting a modular representation in a Genetic Algorithm we can make efficiency gains that enable superior scaling characteristics to problems of increasing size. We present a comparison of two modular Genetic Algorithms, one of which is a Grammatical Genetic Programming algorithm, the meta-Grammar Genetic Algorithm (mGGA), which generates binary string sentences instead of traditional GP trees. A number of problems instances are tackled …
Total citations
20082009201020112012201320142015201620172018201920202021202263641331
Scholar articles
E Hemberg, C Gilligan, M O'Neill, A Brabazon - … : 10th European Conference, EuroGP 2007, Valencia …, 2007