• DocumentCode
    1026974
  • Title

    K-Means+ID3: A Novel Method for Supervised Anomaly Detection by Cascading K-Means Clustering and ID3 Decision Tree Learning Methods

  • Author

    Gaddam, Shekhar R. ; Phoha, Vir V. ; Balagani, Kiran S.

  • Volume
    19
  • Issue
    3
  • fYear
    2007
  • fDate
    3/1/2007 12:00:00 AM
  • Firstpage
    345
  • Lastpage
    354
  • Abstract
    In this paper, we present "k-means+ID3", a method to cascade k-means clustering and the ID3 decision tree learning methods for classifying anomalous and normal activities in a computer network, an active electronic circuit, and a mechanical mass-beam system. The k-means clustering method first partitions the training instances into k clusters using Euclidean distance similarity. On each cluster, representing a density region of normal or anomaly instances, we build an ID3 decision tree. The decision tree on each cluster refines the decision boundaries by learning the subgroups within the cluster. To obtain a final decision on classification, the decisions of the k-means and ID3 methods are combined using two rules: 1) the nearest-neighbor rule and 2) the nearest-consensus rule. We perform experiments on three data sets: 1) network anomaly data (NAD), 2) Duffing equation data (DED), and 3) mechanical system data (MSD), which contain measurements from three distinct application domains of computer networks, an electronic circuit implementing a forced Duffing equation, and a mechanical system, respectively. Results show that the detection accuracy of the k-means+ID3 method is as high as 96.24 percent at a false-positive-rate of 0.03 percent on NAD; the total accuracy is as high as 80.01 percent on MSD and 79.9 percent on DED
  • Keywords
    computer networks; decision trees; learning (artificial intelligence); pattern clustering; security of data; Duffing equation data; Euclidean distance; ID3 decision tree learning method; computer network security; k-means clustering; mechanical system data; network anomaly data; supervised anomaly detection system; Classification tree analysis; Clustering methods; Computer networks; Decision trees; Electronic circuits; Equations; Euclidean distance; Learning systems; Mechanical systems; Performance evaluation; Anomaly detection; classification; decision trees; k-Means clustering; receiver operating characteristic (ROC) curves.;
  • fLanguage
    English
  • Journal_Title
    Knowledge and Data Engineering, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1041-4347
  • Type

    jour

  • DOI
    10.1109/TKDE.2007.44
  • Filename
    4072746