• DocumentCode
    37796
  • Title

    L1-Norm Kernel Discriminant Analysis Via Bayes Error Bound Optimization for Robust Feature Extraction

  • Author

    Wenming Zheng ; Zhouchen Lin ; Haixian Wang

  • Author_Institution
    Res. Center for Learning Sci., Southeast Univ., Nanjing, China
  • Volume
    25
  • Issue
    4
  • fYear
    2014
  • fDate
    Apr-14
  • Firstpage
    793
  • Lastpage
    805
  • Abstract
    A novel discriminant analysis criterion is derived in this paper under the theoretical framework of Bayes optimality. In contrast to the conventional Fisher´s discriminant criterion, the major novelty of the proposed one is the use of L1 norm rather than L2 norm, which makes it less sensitive to the outliers. With the L1-norm discriminant criterion, we propose a new linear discriminant analysis (L1-LDA) method for linear feature extraction problem. To solve the L1-LDA optimization problem, we propose an efficient iterative algorithm, in which a novel surrogate convex function is introduced such that the optimization problem in each iteration is to simply solve a convex programming problem and a close-form solution is guaranteed to this problem. Moreover, we also generalize the L1-LDA method to deal with the nonlinear robust feature extraction problems via the use of kernel trick, and hereafter proposed the L1-norm kernel discriminant analysis (L1-KDA) method. Extensive experiments on simulated and real data sets are conducted to evaluate the effectiveness of the proposed method in comparing with the state-of-the-art methods.
  • Keywords
    belief networks; convex programming; feature extraction; iterative methods; Bayes error bound optimization; Bayes optimality; L1-KDA method; L1-LDA method; L1-norm kernel discriminant analysis; close-form solution; convex programming problem; discriminant analysis criterion; efficient iterative algorithm; kernel trick; linear discriminant analysis; linear feature extraction problem; nonlinear robust feature extraction problems; robust feature extraction; surrogate convex function; Feature extraction; Kernel; Optimization; Principal component analysis; Robustness; Upper bound; Vectors; L1-norm kernel discriminant analysis (L1-KDA); L1-norm linear discriminant analysis (L1-LDA); Linear discriminant analysis (LDA); robust feature extraction;
  • fLanguage
    English
  • Journal_Title
    Neural Networks and Learning Systems, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    2162-237X
  • Type

    jour

  • DOI
    10.1109/TNNLS.2013.2281428
  • Filename
    6619446