Statistical learning method of discontinuous functions using simultaneous recurrent networks

A statistical approximation learning (SAL) method is proposed for a new type of neural network: simultaneous recurrent networks (SRNs). SRNs have the ability to approximate non-smooth functions which cannot be approximated by using conventional multi-layer perceptrons (MLPs). However, most of the learning methods for SRNs are computationally expensive due to their inherent recursive calculations. To solve this problem, a novel approximation learning method is proposed by using a statistical relation between the time series of the network outputs and the network configuration parameters. Simulation results show that the proposed method can learn a strongly nonlinear function efficiently.

[1]  P. J. Werbos Optimization methods for brain-like intelligent control , 1995, Proceedings of 1995 34th IEEE Conference on Decision and Control.

[2]  Laurene V. Fausett,et al.  Fundamentals Of Neural Networks , 1993 .

[3]  Kumpati S. Narendra,et al.  Identification and control of dynamical systems using neural networks , 1990, IEEE Trans. Neural Networks.

[4]  Paul J. Werbos,et al.  The roots of backpropagation , 1994 .

[5]  Geoffrey E. Hinton,et al.  Learning representations by back-propagating errors , 1986, Nature.

[6]  Bin Yu,et al.  Asymptotically optimal function estimation by minimum complexity criteria , 1994, Proceedings of 1994 IEEE International Symposium on Information Theory.