Conference paper

Rule extraction from self-organizing networks


Authors listHammer, B; Rechtien, A; Strickert, M; Villmann, T

Publication year2002

Pages877-883

JournalLecture notes in computer science

Volume number2415

ISSN0302-9743

ISBN3-540-44074-7

DOI Linkhttps://doi.org/10.1007/3-540-46084-5_142

Conference12th International Conference on Artifical Neural Networks (ICANN 2002)

PublisherSpringer


Abstract
Generalized relevance learning vector quantization (GRLVQ) [4] constitutes a prototype based clustering algorithm based on LVQ [5] with energy function and adaptive metric. We propose a method for extracting logical rules from a trained GRLVQ-network. Real valued attributes are automatically transformed to symbolic values. The rules are given in the form of a decision tree yielding several advantages: hybrid symbolic/subsymbolic descriptions can be obtained as an alternative and the complexity of the rules can be controlled.



Authors/Editors




Citation Styles

Harvard Citation styleHammer, B., Rechtien, A., Strickert, M. and Villmann, T. (2002) Rule extraction from self-organizing networks, Lecture notes in computer science, 2415, pp. 877-883. https://doi.org/10.1007/3-540-46084-5_142

APA Citation styleHammer, B., Rechtien, A., Strickert, M., & Villmann, T. (2002). Rule extraction from self-organizing networks. Lecture notes in computer science. 2415, 877-883. https://doi.org/10.1007/3-540-46084-5_142


Last updated on 2025-06-06 at 12:08