Multiple distribution data description learning method for novelty detection

Trung Le, Dat Tran, Phuoc Nguyen, Wanli Ma, Dharmendra Sharma

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    14 Citations (Scopus)

    Abstract

    Current data description learning methods for novelty detection such as support vector data description and small sphere with large margin construct a spherically shaped boundary around a normal data set to separate this set from abnormal data. The volume of this sphere is minimized to reduce the chance of accepting abnormal data. However those learning methods do not guarantee that the single spherically shaped boundary can best describe the normal data set if there exist some distinctive data distributions in this set. We propose in this paper a new data description learning method that constructs a set of spherically shaped boundaries to provide a better data description to the normal data set. An optimisation problem is proposed and solving this problem results in an iterative learning algorithm to determine the set of spherically shaped boundaries. We prove that the classification error will be reduced after each iteration in our learning method. Experimental results on 23 well-known data sets show that the proposed method provides lower classification error rates.

    Original languageEnglish
    Title of host publicationProceedings of International Joint Conference on Neural Networks
    Subtitle of host publication San Jose, California, USA, July 31 – August 5, 2011
    PublisherIEEE, Institute of Electrical and Electronics Engineers
    Pages2321-2326
    Number of pages6
    ISBN (Print)9781457710865
    DOIs
    Publication statusPublished - 2011
    EventIEEE International Joint Conference on Neural Networks 2011 - San Jose, United States of America
    Duration: 31 Jul 20115 Aug 2011
    https://ieeexplore.ieee.org/xpl/conhome/6022827/proceeding (Proceedings)

    Conference

    ConferenceIEEE International Joint Conference on Neural Networks 2011
    Abbreviated titleIJCNN 2011
    Country/TerritoryUnited States of America
    CitySan Jose
    Period31/07/115/08/11
    Internet address

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