• DocumentCode
    55634
  • Title

    Multiple Graph Label Propagation by Sparse Integration

  • Author

    Karasuyama, Masayuki ; Mamitsuka, Hiroshi

  • Author_Institution
    Bioinf. Center, Kyoto Univ., Uji, Japan
  • Volume
    24
  • Issue
    12
  • fYear
    2013
  • fDate
    Dec. 2013
  • Firstpage
    1999
  • Lastpage
    2012
  • Abstract
    Graph-based approaches have been most successful in semisupervised learning. In this paper, we focus on label propagation in graph-based semisupervised learning. One essential point of label propagation is that the performance is heavily affected by incorporating underlying manifold of given data into the input graph. The other more important point is that in many recent real-world applications, the same instances are represented by multiple heterogeneous data sources. A key challenge under this setting is to integrate different data representations automatically to achieve better predictive performance. In this paper, we address the issue of obtaining the optimal linear combination of multiple different graphs under the label propagation setting. For this problem, we propose a new formulation with the sparsity (in coefficients of graph combination) property which cannot be rightly achieved by any other existing methods. This unique feature provides two important advantages: 1) the improvement of prediction performance by eliminating irrelevant or noisy graphs and 2) the interpretability of results, i.e., easily identifying informative graphs on classification. We propose efficient optimization algorithms for the proposed approach, by which clear interpretations of the mechanism for sparsity is provided. Through various synthetic and two real-world data sets, we empirically demonstrate the advantages of our proposed approach not only in prediction performance but also in graph selection ability.
  • Keywords
    data integration; graph theory; learning (artificial intelligence); pattern classification; data classification; data integration; data representations; graph selection ability; graph-based semisupervised learning; heterogeneous data sources; multiple graph label propagation; prediction performance; sparse integration; Computational complexity; Laplace equations; Linear programming; Noise measurement; Optimization; Semisupervised learning; Symmetric matrices; Graph-based semisupervised learning; label propagation; multiple graph integration; sparsity;
  • fLanguage
    English
  • Journal_Title
    Neural Networks and Learning Systems, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    2162-237X
  • Type

    jour

  • DOI
    10.1109/TNNLS.2013.2271327
  • Filename
    6566159