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DOI: 10.1145/1068009.1068323
OpenAccess: Closed
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XCS with computed prediction in multistep environments

Pier Luca Lanzi,Daniele Loiacono,Stewart W. Wilson,David E. Goldberg

Computer science
Artificial intelligence
2005
XCSF extends the typical concept of learning classifier systems through the introduction of computed classifier prediction. Initial results show that XCSF's computed prediction can be used to evolve accurate piecewise linear approximations of simple functions. In this paper, we take XCSF one step further and apply it to typical reinforcement learning problems involving delayed rewards. In essence, we use XCSF as a method of generalized (linear) reinforcement learning to evolve piecewise linear approximations of the payoff surfaces of typical multistep problems. Our results show that XCSF can easily evolve optimal and near optimal solutions for problems introduced in the literature to test linear reinforcement learning methods.
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    XCS with computed prediction in multistep environments” is a paper by Pier Luca Lanzi Daniele Loiacono Stewart W. Wilson David E. Goldberg published in 2005. It has an Open Access status of “closed”. You can read and download a PDF Full Text of this paper here.