• DocumentCode
    110754
  • Title

    Visual Classification by \\ell _1 -Hypergraph Modeling

  • Author

    Meng Wang ; Xueliang Liu ; Xindong Wu

  • Author_Institution
    Sch. of Comput. Sci. & Inf. Eng., Hefei Univ. of Technol., Hefei, China
  • Volume
    27
  • Issue
    9
  • fYear
    2015
  • fDate
    Sept. 1 2015
  • Firstpage
    2564
  • Lastpage
    2574
  • Abstract
    Visual classification has attracted considerable research interests in the past decades. In this paper, a novel ℓ1-hypergraph model for visual classification is proposed. Hypergraph learning, as a natural extension of graph model, has been widely used in many machine learning tasks. In previous work, hypergraph is usually constructed by attribute-based or neighborhood-based methods. That is, a hyperedge is generated by connecting a set of samples sharing a same feature attribute or in a neighborhood. However, these methods are unable to explore feature space globally or sensitive to noises. To address these problems, we propose a novel hypergraph construction approach that leverages sparse representation to generate hyperedges and learns the relationship among hyperedges and their vertices. First, for each sample, a hyperedge is generated by regarding it as the centroid and linking it as well as its nearest neighbors. Then, the sparse representation method is applied to represent the centroid vertex by other vertices within the same hyperedge. The vertices with zero coefficients are removed from the hyperedge. Finally, the representation coefficients are used to define the incidence relation between the hyperedge and the vertices. In our approach, we also optimize the hyperedge weights to modulate the effects of different hyperedges. We leverage the prior knowledge on the hyperedges so that the hyperedges sharing more vertices can have closer weights, where a graph Laplacian is used to regularize the optimization of the weights. Our approach is named ℓ1-hypergraph since the ℓ1 sparse representation is employed in the hypergraph construction process. The method is evaluated on various visual classification tasks, and it demonstrates promising performance.
  • Keywords
    graph theory; learning (artificial intelligence); pattern classification; ℓ1-hypergraph modeling; attribute-based methods; centroid vertex; graph Laplacian; hypergraph learning; machine learning; neighborhood-based methods; sparse representation; visual classification; Data models; Equations; Laplace equations; Mathematical model; Optimization; Sparse matrices; Visualization; Visual classification; hyperedge; hypergraph; regularization;
  • fLanguage
    English
  • Journal_Title
    Knowledge and Data Engineering, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1041-4347
  • Type

    jour

  • DOI
    10.1109/TKDE.2015.2415497
  • Filename
    7064739