• DocumentCode
    73813
  • Title

    Probabilistic Novelty Detection With Support Vector Machines

  • Author

    Clifton, L. ; Clifton, D.A. ; Yang Zhang ; Watkinson, Peter ; Tarassenko, Lionel ; Hujun Yin

  • Author_Institution
    Dept. of Eng. Sci., Univ. of Oxford, Oxford, UK
  • Volume
    63
  • Issue
    2
  • fYear
    2014
  • fDate
    Jun-14
  • Firstpage
    455
  • Lastpage
    467
  • Abstract
    Novelty detection, or one-class classification, is of particular use in the analysis of high-integrity systems, in which examples of failure are rare in comparison with the number of examples of stable behaviour, such that a conventional multi-class classification approach cannot be taken. Support Vector Machines (SVMs) are a popular means of performing novelty detection, and it is conventional practice to use a train-validate-test approach, often involving cross-validation, to train the one-class SVM, and then select appropriate values for its parameters. An alternative method, used with multi-class SVMs, is to calibrate the SVM output into conditional class probabilities. A probabilistic approach offers many advantages over the conventional method, including the facility to select automatically a probabilistic novelty threshold. The contributions of this paper are (i) the development of a probabilistic calibration technique for one-class SVMs, such that on-line novelty detection may be performed in a probabilistic manner; and (ii) the demonstration of the advantages of the proposed method (in comparison to the conventional one-class SVM methodology) using case studies, in which one-class probabilistic SVMs are used to perform condition monitoring of a high-integrity industrial combustion plant, and in detecting deterioration in patient physiological condition during patient vital-sign monitoring.
  • Keywords
    pattern classification; probability; reliability theory; support vector machines; condition monitoring; conditional class probabilities; cross-validation; deterioration detection; high-integrity industrial combustion plant; high-integrity systems; multiclass SVM; multiclass classification approach; one-class classification; one-class probabilistic SVM; online novelty detection; patient physiological condition; patient vital-sign monitoring; probabilistic approach; probabilistic calibration technique; probabilistic novelty detection; probabilistic novelty threshold; stable behaviour; support vector machines; train-validate-test approach; Calibration; Condition monitoring; Data models; Monitoring; Probabilistic logic; Support vector machines; Training; Support vector machine; calibration; condition monitoring; novelty detection; one-class classification;
  • fLanguage
    English
  • Journal_Title
    Reliability, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    0018-9529
  • Type

    jour

  • DOI
    10.1109/TR.2014.2315911
  • Filename
    6786486