Corpus ID: 116489712

Function approximation with a classifier system

@inproceedings{Wilson2001FunctionAW,
  title={Function approximation with a classifier system},
  author={S. Wilson},
  year={2001}
}
  • S. Wilson
  • Published 2001
  • Mathematics
  • A classifier system, XCSF, is introduced in which the prediction estimation mechanism is used to learn approximations to functions. The addition of weight vectors to the classifiers allows piecewise-linear approximation. Results on functions of up to six dimensions show high accuracy. An interesting generalization of classifier structure is suggested. 
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