• DocumentCode
    1263896
  • Title

    Adaptive resolution min-max classifiers

  • Author

    Rizzi, Antonello ; Panella, Massimo ; Mascioli, Fabio Massimo Frattale

  • Author_Institution
    INFO-COM Dept., Univ. of Rome "La Sapienza", Italy
  • Volume
    13
  • Issue
    2
  • fYear
    2002
  • fDate
    3/1/2002 12:00:00 AM
  • Firstpage
    402
  • Lastpage
    414
  • Abstract
    A high automation degree is one of the most important features of data driven modeling tools and it should be taken into consideration in classification systems design. In this regard, constructive training algorithms are essential to improve the automation degree of a modeling system. Among neuro-fuzzy classifiers, Simpson´s (1992) min-max networks have the advantage of being trained in a constructive way. The use of the hyperbox, as a frame on which different membership functions can be tailored, makes the min-max model a flexible tool. However, the original training algorithm evidences some serious drawbacks, together with a low automation degree. In order to overcome these inconveniences, in this paper two new learning algorithms for fuzzy min-max neural classifiers are proposed: the adaptive resolution classifier (ARC) and its pruning version (PARC). ARC/PARC generates a regularized min-max network by a succession of hyperbox cuts. The generalization capability of ARC/PARC technique mostly depends on the adopted cutting strategy. By using a recursive cutting procedure (R-ARC and R-PARC) it is possible to obtain better results. ARC, PARC, R-ARC, and R-PARC are characterized by a high automation degree and allow to achieve networks with a remarkable generalization capability. Their performances are evaluated through a set of toy problems and real data benchmarks. The paper also proposes a suitable index that can be used for the sensitivity analysis of the classification systems under consideration
  • Keywords
    fuzzy neural nets; generalisation (artificial intelligence); learning (artificial intelligence); pattern classification; performance evaluation; adaptive resolution classifier; adaptive resolution min-max classifiers; classification systems design; data driven modeling tools; fuzzy min-max neural classifiers; generalization; hyperbox; learning algorithms; membership functions; min-max networks; neurofuzzy classifiers; performance evaluation; pruning adaptive resolution classifier; recursive cutting procedure; sensitivity analysis; training algorithms; Design automation; Force measurement; Function approximation; Intelligent systems; Particle measurements; Performance evaluation; Robustness; Sensitivity analysis; System testing;
  • fLanguage
    English
  • Journal_Title
    Neural Networks, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1045-9227
  • Type

    jour

  • DOI
    10.1109/72.991426
  • Filename
    991426