DocumentCode
2730723
Title
XCS with computed prediction in continuous multistep environments
Author
Lanzi, Pier Luca ; Loiacono, Daniele ; Wilson, Stewart W. ; Goldberg, David E.
Author_Institution
Dip. di Elettronica e Informazione, Politecnico di Milano, Italy
Volume
3
fYear
2005
fDate
2-5 Sept. 2005
Firstpage
2032
Abstract
We apply XCS with computed prediction (XCSF) to tackle multistep reinforcement learning problems involving continuous inputs. In essence we use XCSF as a method of generalized reinforcement learning. We show that in domains involving continuous inputs and delayed rewards XCSF can evolve compact populations of accurate maximally general classifiers which represent the optimal solution to the target problem. We compare the performance of XCSF with that of tabular Q-learning adapted to the continuous domains considered here. The results we present show that XCSF can converge much faster than tabular techniques while producing more compact solutions. Our results also suggest that when exploration is less effective in some areas of the problem space, XCSF can exploit effective generalizations to extend the evolved knowledge beyond the frequently explored areas. In contrast, in the same situations, the convergence speed of tabular Q-learning worsens.
Keywords
convergence; evolutionary computation; generalisation (artificial intelligence); learning (artificial intelligence); optimisation; pattern classification; XCSF; computed prediction; generalizations; multistep reinforcement learning problems; tabular Q-learning; Boolean functions; Delay; Genetic algorithms; Genetic engineering; Laboratories; Learning; Piecewise linear approximation; Piecewise linear techniques; Polynomials; System testing;
fLanguage
English
Publisher
ieee
Conference_Titel
Evolutionary Computation, 2005. The 2005 IEEE Congress on
Print_ISBN
0-7803-9363-5
Type
conf
DOI
10.1109/CEC.2005.1554945
Filename
1554945
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