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A Genetic-Algorithms Based Evolutionary Computational Neural Network for Modelling Spatial Interaction Data

In: Spatial Analysis and GeoComputation

Author

Listed:
  • Yee Leung

Abstract

Building a feedforward computational neural network model (CNN) involves two distinct tasks: determination of the network topology and weight estimation. The specification of a problem adequate network topology is a key issue and the primary focus of this contribution. Up to now, this issue has been either completely neglected in spatial application domains, or tackled by search heuristics (see Fischer and Gopal 1994). With the view of modelling interactions over geographic space, the current chapter considers this problem as a global optimisation problem and proposes a novel approach that embeds backpropagation learning into the evolutionary paradigm of genetic algorithms. This is accomplished by interweaving a genetic search for finding an optimal CNN topology with gradient-based backpropagation learning for determining the network parameters. Thus, the model builder will be relieved of the burden of identifying appropriate CNN-topologies that will allow a problem to be solved with simple, but powerful learning mechanisms, such as backpropagation of gradient descent errors. The approach has been applied to the family of three inputs, single hidden layer, single output feedforward CNN models using interregional telecommunication traffic data for Austria, to illustrate its performance and to evaluate its robustness.

Suggested Citation

  • Yee Leung, 2006. "A Genetic-Algorithms Based Evolutionary Computational Neural Network for Modelling Spatial Interaction Data," Springer Books, in: Spatial Analysis and GeoComputation, chapter 8, pages 129-151, Springer.
  • Handle: RePEc:spr:sprchp:978-3-540-35730-8_8
    DOI: 10.1007/3-540-35730-0_8
    as

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