An Efficient Learning Rule of Simple PR systems

  • Alan M. N. Fu (Department of Electrical Engineering) ;
  • Hong Yan (Department of Electrical Engineering) ;
  • Lim, Gi Y . (Department of Control & Instrumentation Engineering)
  • Published : 1998.06.01

Abstract

The probabilistic relaxation(PR) scheme based on the conditional probability and probability space partition has the important property that when its compatibility coefficient matrix (CCM) has uniform components it can classify m-dimensional probabilistic distribution vectors into different classes. When consistency or inconsistency measures have been defined, the properties of PRs are completely determined by the compatibility coefficients among labels of labeled objects and influence weight among labeled objects. In this paper we study the properties of PR in which both compatibility coefficients and influence weights are uniform, and then a learning rule for such PR system is derived. Experiments have been performed to verify the effectiveness of the learning rule.

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