Knowledge Based Feature Generation for Inductive Learning

@inproceedings{Callan1993KnowledgeBF,
  title={Knowledge Based Feature Generation for Inductive Learning},
  author={James P. Callan},
  year={1993}
}
Knowledge Based Feature Generation for Inductive Learning February James P Callan B A University of Connecticut M S University of Massachusetts Ph D University of Massachusetts Directed by Professor Paul E Utgo Inductive learning is an approach to machine learning in which concepts are learned from examples and counterexamples One requirement for inductive learning is an explicit representation of the characteristics or features that determine whether an object is an example or counterexample… CONTINUE READING

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