Title of article :
Stochastic sensitivity analysis and Langevin simulation for neural network learning
Author/Authors :
Koda، نويسنده , , Masato، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 1997
Abstract :
A comprehensive theoretical framework is proposed for the learning of a class of gradient-type neural networks with an additive Gaussian white noise process. The study is based on stochastic sensitivity analysis techniques, and formal expressions are obtained for stochastic learning laws in terms of functional derivative sensitivity coefficients. The present method, based on Langevin simulation techniques, uses only the internal states of the network and ubiquitous noise to compute the learning information inherent in the stochastic correlation between noise signals and the performance functional. In particular, the method does not require the solution of adjoint equations of the back-propagation type. Thus, the present algorithm has the potential for efficiently learning network weights with significantly fewer computations. Application to an unfolded multi-layered network is described, and the results are compared with those obtained by using a back-propagation method.
Journal title :
Reliability Engineering and System Safety
Journal title :
Reliability Engineering and System Safety