MA Ru-ning, CHEN Tian-ping. Recurrent Neural Network Model Based on Projective Operator and Its Application to Optimization Problems[J]. Applied Mathematics and Mechanics, 2006, 27(4): 484-494.
Citation: MA Ru-ning, CHEN Tian-ping. Recurrent Neural Network Model Based on Projective Operator and Its Application to Optimization Problems[J]. Applied Mathematics and Mechanics, 2006, 27(4): 484-494.

Recurrent Neural Network Model Based on Projective Operator and Its Application to Optimization Problems

  • Received Date: 2004-03-24
  • Rev Recd Date: 2006-01-10
  • Publish Date: 2006-04-15
  • The recurrent neural network (RNN) model based on projective operator is studied.Different from the former study,the value region of projective operator in the neural network which they study was a general closed convex subset of n demensional Euclidean space and it wasn't a compact convex set in general,that is,the value region of projective operator was probably unbounded.They prove that the network has a global solution and its solution trajectory converges to some equilibrium set whenever objective function satisfies some conditions.After that,the model was applied to continuously differentiable optimization and nonlinear or implicit complementarity problems.In addition,simulation experiments confirm the efficiency of the RNN.
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