An Analysis of Generalization in the XCS Classifier System

@article{Lanzi1999AnAO,
  title={An Analysis of Generalization in the XCS Classifier System},
  author={P. Lanzi},
  journal={Evolutionary Computation},
  year={1999},
  volume={7},
  pages={125-149}
}
  • P. Lanzi
  • Published 1999
  • Mathematics, Computer Science
  • Evolutionary Computation
The XCS classifier system represents a major advance in learning classifier systems research because (1) it has a sound and accurate generalization mechanism, and (2) its learning mechanism is based on Q-learning, a recognized learning technique. In taking XCS beyond its very first environments and parameter settings, we show that, in certain difficult sequential (animat) environments, performance is poor. We suggest that this occurs because in the chosen environments, some conditions for… Expand
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