UP - logo
E-resources
Peer reviewed Open access
  • Fuzzy Multiple Subspace Fit...
    RELATOR, Raissa; KATO, Tsuyoshi; TOMARU, Takuma; OHTA, Naoya

    IEICE Transactions on Information and Systems, 2014, Volume: E97.D, Issue: 10
    Journal Article

    Anomaly detection has several practical applications in different areas, including intrusion detection, image processing, and behavior analysis among others. Several approaches have been developed for this task such as detection by classification, nearest neighbor approach, and clustering. This paper proposes alternative clustering algorithms for the task of anomaly detection. By employing a weighted kernel extension of the least squares fitting of linear manifolds, we develop fuzzy clustering algorithms for kernel manifolds. Experimental results show that the proposed algorithms achieve promising performances compared to hard clustering techniques.