• DocumentCode
    3262634
  • Title

    Admissibility of fuzzy support vector machine through loss function

  • Author

    Chan-Yun Yang ; Gene Eu Jan ; Kuo-Ho Su

  • Author_Institution
    Dept. of Electr. Eng., Nat. Taipei Univ., Taipei, Taiwan
  • fYear
    2013
  • fDate
    4-6 July 2013
  • Firstpage
    75
  • Lastpage
    80
  • Abstract
    In statistical decision theory, the admissibility is the first issue to fulfill the feasibility of a decision rule. Without the admissibility, the decision rule is impractical for discriminations. The study decomposes first the fuzzy support vector machine (fuzzy SVM), which is a crucial innovation due to its robust capability to resist the input contaminated noise, into a regularized optimization expression arg minf∈H Ω[f]+λRRemp[f] and exploits the regularization of loss function from the expression mathematically. The decomposition is beneficial to the programming of empirical risk minimization which uses the empirical risk instead of the true expected risk to learn a hypothesis. The empirical risk, composed elementally by the loss function, here indeed is the key for achieving the success of the fuzzy SVM. Because of the important causality, the study examines preliminarily the admissibility of loss functions which is recruited to form the fuzzy SVM. The examination is issued first by a loss function associated risk, called □-risk. By a step-by-step derivation of a sufficient and necessary condition for the □-risk to agree equivalently an unbiased Bayes risk, the admissibility of the loss function can then be confirmed and abbreviated as a simple rule in the study. Experimental chart examination is also issued simultaneously for an easy and clear observation to validate the admissibility of the loss function regularized fuzzy SVM.
  • Keywords
    decision making; fuzzy set theory; optimisation; risk analysis; statistical analysis; support vector machines; SVM; decision rule; empirical risk minimization; fuzzy support vector machine admissibility; input contaminated noise; loss function; regularized optimization expression; statistical decision theory; Fasteners; Optimization; Robustness; Standards; Statistical learning; Support vector machines; Training; Admissibility; Fuzzy; Loss Function; Robust; Support Vector Machine;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    System Science and Engineering (ICSSE), 2013 International Conference on
  • Conference_Location
    Budapest
  • ISSN
    2325-0909
  • Print_ISBN
    978-1-4799-0007-7
  • Type

    conf

  • DOI
    10.1109/ICSSE.2013.6614636
  • Filename
    6614636