VI Brazilian Symposium on Neural Networks (SBRN'00) Adaptation of Parameters of BP Algorithm Using Learning Automata Rio de Janeiro, Brazil January 22-January 25 ISBN: 0-7695-0856-1
Backpropagation (BP) algorithm is a systematic method for training multilayer neural networks. Despite of the many successful applications of backpropagation, it has many drawbacks. For complex problems, it may require a long time to train the networks, and it may not train at all. Long training time can be the result of the non-optimal parameters. It is not easy to choose appropriate value of the parameters for a particular problem. In this paper, by interconnection of fixed structure learning automata (FSLA) to the feedforward neural networks, we apply learning automata scheme for adjusting these parameters based on the observation of random response of neural networks. The main motivation in using learning automata as an adaptation algorithm is to use its capability of global optimization when dealing with multi-modal surface. The feasibility of proposed method is shown through simulations on three learning problems: exclusive-or, encoding problem, and digit recognition. The simulation results show that the adaptation of these parameters using this method not only increases the convergence rate of learning but it increases the likelihood of escaping from the local minima.
Index Terms:
Neural Network, Backpropagation, Learning Automata, Momentum Factor, Steepness Parameter
Citation:
Hamid Beigy, M.R. Meybodi, "Adaptation of Parameters of BP Algorithm Using Learning Automata," sbrn, pp.24, VI Brazilian Symposium on Neural Networks (SBRN'00), 2000 Usage of this product signifies your acceptance of the Terms of Use. | |||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||