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|Month=Dezember | |Month=Dezember | ||
|Booktitle=Proceedings of the 7th International Conference on Simulated Evolution And Learning (SEAL 2008) | |Booktitle=Proceedings of the 7th International Conference on Simulated Evolution And Learning (SEAL 2008) | ||
+ | |Editor=Xiaodong Li, Michael Kirley, Mengjie Zhang, David Green, Vic Ciesielski, Hussein Abbass, Zbigniew Michalewicz, Tim Hendtlass, Kalyanmoy Deb, Kay Chen Tan, Jürgen Branke, and Yuhui Shi | ||
|Pages=111-120 | |Pages=111-120 | ||
|Publisher=Springer | |Publisher=Springer |
Aktuelle Version vom 16. September 2009, 12:13 Uhr
Improving XCS Performance by Distribution
Improving XCS Performance by Distribution
Published: 2008
Dezember
Herausgeber: Xiaodong Li, Michael Kirley, Mengjie Zhang, David Green, Vic Ciesielski, Hussein Abbass, Zbigniew Michalewicz, Tim Hendtlass, Kalyanmoy Deb, Kay Chen Tan, Jürgen Branke, and Yuhui Shi
Buchtitel: Proceedings of the 7th International Conference on Simulated Evolution And Learning (SEAL 2008)
Ausgabe: 5361
Reihe: LNCS
Seiten: 111-120
Verlag: Springer
Referierte Veröffentlichung
BibTeX
Kurzfassung
Learning Classifier Systems (LCS) are rule-based evolutionary reinforcement learning (RL) systems. Today, especially variants of Wilson's eXtended Classifier System (XCS) are widely applied for machine learning. Despite their widespread application, LCSs have drawbacks: The number of reinforcement cycles an LCS requires for learning largely depends on the complexity of the learning task. A straightforward way to reduce this complexity is to split the task into smaller sub-problems. Whenever this can be done, the performance should be improved significantly. In this paper, a nature-inspired multi-agent scenario is used to evaluate and compare different distributed LCS variants. Results show that improvements in learning speed can be achieved by cleverly dividing a problem into smaller learning sub-problems.
ISBN: 978-3-540-89693-7
ISSN: 0302-9743
DOI Link: 10.1007/978-3-540-89694-4_12
Organic Computing, Maschinelles Lernen