Mining Oblique Data with XCS

@inproceedings{Wilson2000MiningOD,
  title={Mining Oblique Data with XCS},
  author={S. Wilson},
  booktitle={IWLCS},
  year={2000}
}
  • S. Wilson
  • Published in IWLCS 2000
  • Engineering, Computer Science
  • The classifier system XCS was investigated for data mining applications where the dataset discrimination surface (DS) is generally oblique to the attribute axes. Despite the classifiers' hyper-rectangular predicates, XCS reached 100% performance on synthetic problems with diagonal DS's and, in a train/test experiment, competitive performance on the Wisconsin Breast Cancer dataset. Final classifiers in an extended WBC learning run were interpretable to suggest dependencies on one or a few… CONTINUE READING
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