• DocumentCode
    1533825
  • Title

    Equilibria of Perceptrons for Simple Contingency Problems

  • Author

    Dawson, M.R.W. ; Dupuis, B.

  • Author_Institution
    Dept. of Psychol., Univ. of Alberta, Edmonton, AB, Canada
  • Volume
    23
  • Issue
    8
  • fYear
    2012
  • Firstpage
    1340
  • Lastpage
    1344
  • Abstract
    The contingency between cues and outcomes is fundamentally important to theories of causal reasoning and to theories of associative learning. Researchers have computed the equilibria of Rescorla-Wagner models for a variety of contingency problems, and have used these equilibria to identify situations in which the Rescorla-Wagner model is consistent, or inconsistent, with normative models of contingency. Mathematical analyses that directly compare artificial neural networks to contingency theory have not been performed, because of the assumed equivalence between the Rescorla-Wagner learning rule and the delta rule training of artificial neural networks. However, recent results indicate that this equivalence is not as straightforward as typically assumed, suggesting a strong need for mathematical accounts of how networks deal with contingency problems. One such analysis is presented here, where it is proven that the structure of the equilibrium for a simple network trained on a basic contingency problem is quite different from the structure of the equilibrium for a Rescorla-Wagner model faced with the same problem. However, these structural differences lead to functionally equivalent behavior. The implications of this result for the relationships between associative learning, contingency theory, and connectionism are discussed.
  • Keywords
    inference mechanisms; learning (artificial intelligence); neural nets; Rescorla-Wagner learning rule; Rescorla-Wagner models; artificial neural networks; associative learning; causal reasoning; contingency problems; contingency theory; delta rule training; mathematical analyses; perceptron equilibria; Artificial neural networks; Computational modeling; Probability; Training; Artificial neural networks; associative learning; contingency;
  • fLanguage
    English
  • Journal_Title
    Neural Networks and Learning Systems, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    2162-237X
  • Type

    jour

  • DOI
    10.1109/TNNLS.2012.2199766
  • Filename
    6213123