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An analysis of matching in learning classifier systems

Authors :
Xavier LlorĂ 
Daniele Loiacono
Pier Luca Lanzi
Martin V. Butz
Source :
GECCO, Politecnico di Milano-IRIS
Publication Year :
2008
Publisher :
ACM, 2008.

Abstract

We investigate rule matching in learning classifier systems for problems involving binary and real inputs. We consider three rule encodings: the widely used character-based encoding, a specificity-based encoding, and a binary encoding used in Alecsys. We compare the performance of the three algorithms both on matching alone and on typical test problems. The results on matching alone show that the population generality influences the performance of the matching algorithms based on string representations in different ways. Character-based encoding becomes slower and slower as generality increases, specificity-based encoding becomes faster and faster as generality increases. The results on typical test problems show that the specificity-based representation can halve the time required for matching but also that binary encoding is about ten times faster on the most difficult problems. Moreover, we extend specificity-based encoding to real-inputs and propose an algorithm that can halve the time require for matching real inputs using an interval-based representation.

Details

Database :
OpenAIRE
Journal :
Proceedings of the 10th annual conference on Genetic and evolutionary computation
Accession number :
edsair.doi.dedup.....ff46a54f82a89a12fc819bdbe621e0d4
Full Text :
https://doi.org/10.1145/1389095.1389359