• DocumentCode
    1202074
  • Title

    A self-organizing map for adaptive processing of structured data

  • Author

    Hagenbuchner, Markus ; Sperduti, Alessandro ; Tsoi, Ah Chung

  • Author_Institution
    Fac. of Informatics, Univ. of Wollongong, NSW, Australia
  • Volume
    14
  • Issue
    3
  • fYear
    2003
  • fDate
    5/1/2003 12:00:00 AM
  • Firstpage
    491
  • Lastpage
    505
  • Abstract
    Recent developments in the area of neural networks produced models capable of dealing with structured data. Here, we propose the first fully unsupervised model, namely an extension of traditional self-organizing maps (SOMs), for the processing of labeled directed acyclic graphs (DAGs). The extension is obtained by using the unfolding procedure adopted in recurrent and recursive neural networks, with the replicated neurons in the unfolded network comprising of a full SOM. This approach enables the discovery of similarities among objects including vectors consisting of numerical data. The capabilities of the model are analyzed in detail by utilizing a relatively large data set taken from an artificial benchmark problem involving visual patterns encoded as labeled DAGs. The experimental results demonstrate clearly that the proposed model is capable of exploiting both information conveyed in the labels attached to each node of the input DAGs and information encoded in the DAG topology.
  • Keywords
    data structures; recurrent neural nets; self-organising feature maps; DAG; SOM; adaptive processing; artificial benchmark problem; encoded visual patterns; fully unsupervised model; labeled directed acyclic graphs; neural networks; recurrent neural networks; recursive neural networks; replicated neurons; self-organizing map; structured data; unfolded network; unfolding procedure; Artificial neural networks; Chemistry; Data mining; Data structures; Multilayer perceptrons; Neural networks; Neurons; Pattern analysis; Recurrent neural networks; Self organizing feature maps;
  • fLanguage
    English
  • Journal_Title
    Neural Networks, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    1045-9227
  • Type

    jour

  • DOI
    10.1109/TNN.2003.810735
  • Filename
    1199648