• DocumentCode
    1333946
  • Title

    Compositional Generative Mapping for Tree-Structured Data—Part I: Bottom-Up Probabilistic Modeling of Trees

  • Author

    Bacciu, Davide ; Micheli, Andrea ; Sperduti, Alessandro

  • Author_Institution
    Dipt. di Inf., Univ. di Pisa, Pisa, Italy
  • Volume
    23
  • Issue
    12
  • fYear
    2012
  • Firstpage
    1987
  • Lastpage
    2002
  • Abstract
    We introduce a novel compositional (recursive) probabilistic model for trees that defines an approximated bottom-up generative process from the leaves to the root of a tree. The proposed model defines contextual state transitions from the joint configuration of the children to the parent nodes. We argue that the bottom-up context postulates different probabilistic assumptions with respect to a top-down approach, leading to different representational capabilities. We discuss classes of applications that are best suited to a bottom-up approach. In particular, the bottom-up context is shown to better correlate and model the co-occurrence of substructures among the child subtrees of internal nodes. A mixed memory approximation is introduced to factorize the joint children-to-parent state transition matrix as a mixture of pairwise transitions. The proposed approach is the first practical bottom-up generative model for tree-structured data that maintains the same computational class of its top-down counterpart. Comparative experimental analyses exploiting synthetic and real-world datasets show that the proposed model can deal with deep structures better than a top-down generative model. The model is also shown to better capture structural information from real-world data comprising trees with a large out-degree. The proposed bottom-up model can be used as a fundamental building block for the development of other new powerful models.
  • Keywords
    approximation theory; directed graphs; matrix algebra; tree data structures; approximated bottom-up generative process; bottom-up probabilistic modeling; child subtrees; compositional generative mapping; compositional probabilistic model; contextual state transitions; internal nodes; joint children-to-parent state transition matrix; mixed memory approximation; practical bottom-up generative model; probabilistic assumptions; real-world datasets; top-down generative model; tree out-degree; tree-structured data; Approximation methods; Computational modeling; Data models; Hidden Markov models; Probabilistic logic; Tree data structures; Bottom-up processing; hidden recursive model; hidden tree Markov model; tree-structured data;
  • fLanguage
    English
  • Journal_Title
    Neural Networks and Learning Systems, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    2162-237X
  • Type

    jour

  • DOI
    10.1109/TNNLS.2012.2222044
  • Filename
    6353263