• DocumentCode
    2593595
  • Title

    Nonlinear Manifold Clustering By Dimensionality

  • Author

    Cao, Wenbo ; Haralick, Robert

  • Author_Institution
    Graduate Center, City Univ. of New York, NY
  • Volume
    1
  • fYear
    0
  • fDate
    0-0 0
  • Firstpage
    920
  • Lastpage
    924
  • Abstract
    Because of variable dependence, high dimensional data typically have much lower intrinsic dimensionality than the number of its variables. Hence high dimensional data can be expected to lie in (nonlinear) lower dimensional manifold. In this paper, we describe a nonlinear manifold clustering algorithm. By connecting data vectors with their neighbors in feature space, we construct a neighborhood graph from given set data vectors. Furthermore, geometrical invariance, namely dimensionality, are extracted from the neighborhood of vectors, and used to facilitate the clustering procedure. In addition, we discuss a latent model for data cluster descriptions and an EM algorithm to find such descriptions. Preliminary experiments illustrate that this new algorithm can be used to explore the nonlinear structure of data
  • Keywords
    expectation-maximisation algorithm; graph theory; nonlinear systems; pattern clustering; EM algorithm; geometrical invariance; neighborhood graph; nonlinear manifold clustering by dimensionality; Clustering algorithms; Computer science; Computer vision; Data mining; Joining processes; Machine learning; Machine learning algorithms; Partitioning algorithms; Pattern recognition; Vectors;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Pattern Recognition, 2006. ICPR 2006. 18th International Conference on
  • Conference_Location
    Hong Kong
  • ISSN
    1051-4651
  • Print_ISBN
    0-7695-2521-0
  • Type

    conf

  • DOI
    10.1109/ICPR.2006.865
  • Filename
    1699040