• DocumentCode
    2724205
  • Title

    Manifold Learning using Growing Locally Linear Embedding

  • Author

    Yin, Junsong ; Hu, Dewen ; Zhou, Zongtan

  • Author_Institution
    National Univ. of Defense Technol., Changsha
  • fYear
    2007
  • fDate
    March 1 2007-April 5 2007
  • Firstpage
    73
  • Lastpage
    80
  • Abstract
    Locally linear embedding (LLE) is an effective nonlinear dimensionality reduction method for exploring the intrinsic characteristics of high dimensional data. This paper mainly proposes a hierarchical framework manifold learning method, based on LLE and growing neural gas (GNG), named growing locally linear embedding (GLLE). First, we address the major limitations of the original LLE: intrinsic dimensionality estimation, neighborhood number selection and computational complexity. Then by embedding the topology learning mechanism in GNG, the proposed GLLE algorithm is able to preserve the global topological structures and hold the geometric characteristics of the input patterns, which make the projections more stable and robust. Theoretical analysis and experimental simulations show that GLLE with global topology preservation tackles the three limitations, gives faster learning procedure and lower reconstruction error, and stimulates the wide applications of manifold learning
  • Keywords
    computational geometry; learning (artificial intelligence); neural nets; topology; computational complexity; global topological structures; global topology preservation; growing locally linear embedding; growing neural gas; hierarchical framework manifold learning; high dimensional data; intrinsic dimensionality estimation; neighborhood number selection; nonlinear dimensionality reduction; topology learning; Data mining; Learning systems; Linear discriminant analysis; Machine learning; Manifolds; Network topology; Noise reduction; Partitioning algorithms; Principal component analysis; Redundancy;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Computational Intelligence and Data Mining, 2007. CIDM 2007. IEEE Symposium on
  • Conference_Location
    Honolulu, HI
  • Print_ISBN
    1-4244-0705-2
  • Type

    conf

  • DOI
    10.1109/CIDM.2007.368855
  • Filename
    4221279