An Investigation of Noise-Tolerant Relational Concept Learning Algorithms

@inproceedings{Brunk1991AnIO,
  title={An Investigation of Noise-Tolerant Relational Concept Learning Algorithms},
  author={Clifford Brunk and Michael J. Pazzani},
  booktitle={ML},
  year={1991}
}
We discuss the types of noise that may occur in relational learning systems and describe two approaches to addressing noise in a relational concept learning algorithm. We then evaluate each approach expximentally. 
Highly Influential
This paper has highly influenced 12 other papers. REVIEW HIGHLY INFLUENTIAL CITATIONS

From This Paper

Figures, tables, results, connections, and topics extracted from this paper.
45 Extracted Citations
13 Extracted References
Similar Papers

Citing Papers

Publications influenced by this paper.
Showing 1-10 of 45 extracted citations

Referenced Papers

Publications referenced by this paper.
Showing 1-10 of 13 references

The application of inductive logic programming IO finite element mesh design

  • Dolsak
  • The Firsr International Workshop on Inductive…
  • 1991

The application of inductive logic programming to finite element mesh design

  • B. Dolsak, S. Muggleton
  • The First International Workshop on Inductive…
  • 1991

Abductive explanalion-based learning: A solution 10 the multiple explanation-problem (ML-TR29)

  • W. Cohen
  • 1990
1 Excerpt

A study of explanation-based methods for inductive learning

  • Flann
  • Machine Lparnig
  • 1989

Similar Papers

Loading similar papers…