• DocumentCode
    30270
  • Title

    Efficient Optimization of Performance Measures by Classifier Adaptation

  • Author

    Li, Nan ; Tsang, Ivor W. ; Zhou, Zhi-Hua

  • Author_Institution
    Nanjing University, Nanjing and Soochow University, Suzhou
  • Volume
    35
  • Issue
    6
  • fYear
    2013
  • fDate
    Jun-13
  • Firstpage
    1370
  • Lastpage
    1382
  • Abstract
    In practical applications, machine learning algorithms are often needed to learn classifiers that optimize domain specific performance measures. Previously, the research has focused on learning the needed classifier in isolation, yet learning nonlinear classifier for nonlinear and nonsmooth performance measures is still hard. In this paper, rather than learning the needed classifier by optimizing specific performance measure directly, we circumvent this problem by proposing a novel two-step approach called CAPO, namely, to first train nonlinear auxiliary classifiers with existing learning methods and then to adapt auxiliary classifiers for specific performance measures. In the first step, auxiliary classifiers can be obtained efficiently by taking off-the-shelf learning algorithms. For the second step, we show that the classifier adaptation problem can be reduced to a quadratic program problem, which is similar to linear $({rm SVM}^{rm perf})$ and can be efficiently solved. By exploiting nonlinear auxiliary classifiers, CAPO can generate nonlinear classifier which optimizes a large variety of performance measures, including all the performance measures based on the contingency table and AUC, while keeping high computational efficiency. Empirical studies show that CAPO is effective and of high computational efficiency, and it is even more efficient than linear $({rm SVM}^{rm perf})$.
  • Keywords
    Algorithm design and analysis; Educational institutions; Kernel; Loss measurement; Training; Upper bound; Vectors; Optimize performance measures; classifier adaptation; curriculum learning; ensemble learning;
  • fLanguage
    English
  • Journal_Title
    Pattern Analysis and Machine Intelligence, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0162-8828
  • Type

    jour

  • DOI
    10.1109/TPAMI.2012.172
  • Filename
    6261322