• DocumentCode
    2298586
  • Title

    A Heuristic Initialization-Independent Spectral Clustering

  • Author

    Wang, Huiqing ; Chen, Junjie ; Shaobin Huang ; Kai Guo

  • Author_Institution
    Coll. of Comput. Sci. & Technol., Taiyuan Univ. of Technoloty, Taiyuan, China
  • fYear
    2010
  • fDate
    1-2 Nov. 2010
  • Firstpage
    81
  • Lastpage
    84
  • Abstract
    As an unsupervised learning method, spectral clustering is widely used in machine learning. Spectral clustering algorithms apply spectral graph theory to solve the clustering of non-convex sphere of sample spaces, so that they can be converged to global optimal solution. After the essence of initialization sensitivity in spectral clustering is analyzed, the prim algorithm is used to select the k initial cluster centers, and a threshold parameter is set to solve the problem that two data objects in the same class are selected as the cluster centers, which leads to get the wrong cluster results and increases the iteration times. Based on above, a heuristic initialization-independent spectral clustering algorithm is proposed. Compared with the traditional spectral clustering algorithm and the initialization-sensitive k-means algorithm, the experiments show that the suggested algorithm not only obtains the stable cluster centers and cluster results, but also effectively decreases the iteration times, accordingly improves the clustering performance, which validates the feasibility and effectiveness of the suggested algorithm.
  • Keywords
    concave programming; graph theory; heuristic programming; iterative methods; pattern clustering; unsupervised learning; cluster centers; clustering performance; global optimal solution; heuristic initialization-independent spectral clustering algorithm; initialization sensitivity; initialization-sensitive k-means algorithm; iteration times; machine learning; nonconvex sphere clustering; prim algorithm; spectral clustering algorithms; spectral graph theory; threshold parameter; unsupervised learning method; Approximation algorithms; Cities and towns; Clustering algorithms; Educational institutions; Greedy algorithms; Heuristic algorithms; Sonar; greedy algorithm; initialization sensitivity; k-means clustering; prim algorithm; spectral clustering;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Internet Computing for Science and Engineering (ICICSE), 2010 Fifth International Conference on
  • Conference_Location
    Heilongjiang
  • Print_ISBN
    978-1-4244-9954-0
  • Type

    conf

  • DOI
    10.1109/ICICSE.2010.34
  • Filename
    6076545