• DocumentCode
    1612077
  • Title

    Clustering Service Networks with Entity, Attribute, and Link Heterogeneity

  • Author

    Yang Zhou ; Ling Liu ; Pu, Calton ; Xianqiang Bao ; Kisung Lee ; Palanisamy, Balaji ; Yigitoglu, Emre ; Qi Zhang

  • Author_Institution
    Georgia Inst. of Technol., Atlanta, GA, USA
  • fYear
    2015
  • Firstpage
    257
  • Lastpage
    264
  • Abstract
    Many popular web service networks are content-rich in terms of heterogeneous types of entities and links, associated with incomplete attributes. Clustering such heterogeneous service networks demands new clustering techniques that can handle two heterogeneity challenges: (1) multiple types of entities co-exist in the same service network with multiple attributes, and (2) links between entities have diverse types and carry different semantics. Existing heterogeneous graph clustering techniques tend to pick initial centroids uniformly at random, specify the number k of clusters in advance, and fix k during the clustering process. In this paper, we propose Service Cluster, a novel heterogeneous service network clustering algorithm with four unique features. First, we incorporate various types of entity, attribute and link information into a unified distance measure. Second, we design a Discrete Steepest Descent method to naturally produce initial k and initial centroids simultaneously. Third, we propose a dynamic learning method to automatically adjust the link weights towards clustering convergence. Fourth, we develop an effective optimization strategy to identify new suitable k and k well-chosen centroids at each clustering iteration. Extensive evaluation on real datasets demonstrates that Service Cluster outperforms existing representative methods in terms of both effectiveness and efficiency.
  • Keywords
    Web services; learning (artificial intelligence); optimisation; pattern clustering; Service Cluster; Web service networks; attribute heterogeneity; clustering service networks; discrete steepest descent method; dynamic learning method; entity heterogeneity; heterogeneous graph clustering techniques; heterogeneous service network clustering algorithm; link heterogeneity; optimization strategy; Clustering algorithms; Heterogeneous networks; Learning systems; Optimization; Polynomials; Shape; Web services;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Web Services (ICWS), 2015 IEEE International Conference on
  • Conference_Location
    New York, NY
  • Print_ISBN
    978-1-4673-7271-8
  • Type

    conf

  • DOI
    10.1109/ICWS.2015.43
  • Filename
    7195577