Title :
Beyond Feedforward Models Trained by Backpropagation: A Practical Training Tool for a More Efficient Universal Approximator
Author :
Ilin, R. ; Kozma, R. ; Werbos, P.J.
Author_Institution :
Dept. of Comput. Sci., Univ. of Memphis, Memphis, TN
fDate :
6/1/2008 12:00:00 AM
Abstract :
Cellular simultaneous recurrent neural network (SRN) has been shown to be a function approximator more powerful than the multilayer perceptron (MLP). This means that the complexity of MLP would be prohibitively large for some problems while SRN could realize the desired mapping with acceptable computational constraints. The speed of training of complex recurrent networks is crucial to their successful application. This work improves the previous results by training the network with extended Kalman filter (EKF). We implemented a generic cellular SRN (CSRN) and applied it for solving two challenging problems: 2-D maze navigation and a subset of the connectedness problem. The speed of convergence has been improved by several orders of magnitude in comparison with the earlier results in the case of maze navigation, and superior generalization has been demonstrated in the case of connectedness. The implications of this improvements are discussed.
Keywords :
Kalman filters; backpropagation; cellular neural nets; dynamic programming; function approximation; multilayer perceptrons; nonlinear filters; recurrent neural nets; 2D maze navigation; backpropagation training; cellular simultaneous recurrent neural network; connectedness problem; dynamic programming; extended Kalman filter; feedforward neural network model; multilayer perceptron; universal function approximator; Backpropagation; Cellular neural networks; Convergence; Dynamic programming; Motion planning; Multilayer perceptrons; Navigation; Neural networks; Nonlinear equations; Recurrent neural networks; Backpropagation (BP); Kalman filtering (KF); cellular neural network; dynamic programming (DP); recurrent neural network; Artificial Intelligence; Computer Simulation; Feedback; Neural Networks (Computer); Nonlinear Dynamics;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2008.2000396