• DocumentCode
    39063
  • Title

    Feasibility and Finite Convergence Analysis for Accurate On-Line \\nu -Support Vector Machine

  • Author

    Bin Gu ; Sheng, Victor S.

  • Author_Institution
    Jiangsu Eng. Center of Network Monitoring, Nanjing Univ. of Inf. Sci. & Technol., Nanjing, China
  • Volume
    24
  • Issue
    8
  • fYear
    2013
  • fDate
    Aug. 2013
  • Firstpage
    1304
  • Lastpage
    1315
  • Abstract
    The ν-support vector machine ( ν-SVM) for classification has the advantage of using a parameter ν on controlling the number of support vectors and margin errors. Recently, an interesting accurate on-line algorithm accurate on-line ν-SVM algorithm (AONSVM) is proposed for training ν-SVM. AONSVM can be viewed as a special case of parametric quadratic programming techniques. It is demonstrated that AONSVM avoids the infeasible updating path as far as possible, and successfully converges to the optimal solution based on experimental analysis. However, because of the differences between AONSVM and classical parametric quadratic programming techniques, there is no theoretical justification for these conclusions. In this paper, we prove the feasibility and finite convergence of AONSVM under two assumptions. The main results of feasibility analysis include: 1) the inverses of the two key matrices in AONSVM always exist; 2) the rules for updating the two key inverse matrices are reliable; 3) the variable ζ can control the adjustment of the sum of all the weights efficiently; and 4) a sample cannot migrate back and forth in successive adjustment steps among the set of margin support vectors, the set of error support vectors, and the set of the remaining vectors. Moreover, the analyses of AONSVM also provide the proofs of the feasibility and finite convergence for accurate on-line C-SVM learning directly.
  • Keywords
    learning (artificial intelligence); matrix inversion; pattern classification; quadratic programming; support vector machines; ν-SVM training; AONSVM; accurate online ν-SVM algorithm; classical parametric quadratic programming techniques; classification; error support vectors; experimental analysis; feasibility analysis; finite convergence analysis; key matrix inversion; margin errors; margin support vectors; online ν-support vector machine; online C-SVM learning; Active set method; feasibility analysis; finite convergence analysis; incremental $nu$-support vector classification; online learning;
  • fLanguage
    English
  • Journal_Title
    Neural Networks and Learning Systems, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    2162-237X
  • Type

    jour

  • DOI
    10.1109/TNNLS.2013.2250300
  • Filename
    6509470