• DocumentCode
    3787386
  • Title

    Semisupervised learning of hierarchical latent trait models for data visualization

  • Author

    I.T. Nabney;Y. Sun;P. Tino;A. Kaban

  • Author_Institution
    Neural Comput. Res. Group, Aston Univ., Birmingham, UK
  • Volume
    17
  • Issue
    3
  • fYear
    2005
  • Firstpage
    384
  • Lastpage
    400
  • Abstract
    Recently, we have developed the hierarchical generative topographic mapping (HGTM), an interactive method for visualization of large high-dimensional real-valued data sets. We propose a more general visualization system by extending HGTM in three ways, which allows the user to visualize a wider range of data sets and better support the model development process. 1) We integrate HGTM with noise models from the exponential family of distributions. The basic building block is the latent trait model (LTM). This enables us to visualize data of inherently discrete nature, e.g., collections of documents, in a hierarchical manner. 2) We give the user a choice of initializing the child plots of the current plot in either interactive, or automatic mode. In the interactive mode, the user selects "regions of interest", whereas in the automatic mode, an unsupervised minimum message length (MML)-inspired construction of a mixture of LTMs is employed. The unsupervised construction is particularly useful when high-level plots are covered with dense clusters of highly overlapping data projections, making it difficult to use the interactive mode. Such a situation often arises when visualizing large data sets. 3) We derive general formulas for magnification factors in latent trait models. Magnification factors are a useful tool to improve our understanding of the visualization plots, since they can highlight the boundaries between data clusters. We illustrate our approach on a toy example and evaluate it on three more complex real data sets.
  • Keywords
    "Semisupervised learning","Data visualization","Data mining","Sun","Multidimensional systems","Data analysis","Feedback","Gaussian noise","Quantization"
  • Journal_Title
    IEEE Transactions on Knowledge and Data Engineering
  • Publisher
    ieee
  • ISSN
    1041-4347
  • Type

    jour

  • DOI
    10.1109/TKDE.2005.49
  • Filename
    1388248