Abstract:
Multilayer perceptrons (MLPs) with long- and short-term memories (LASTMs) are proposed for adaptive processing. The activation functions of the output neurons of such a n...Show MoreMetadata
Abstract:
Multilayer perceptrons (MLPs) with long- and short-term memories (LASTMs) are proposed for adaptive processing. The activation functions of the output neurons of such a network are linear, and thus the weights in the last layer affect the outputs of the network linearly and are called linear weights. These linear weights constitute the short-term memory and other weights the long-term memory. It is proven that virtually any function f(x, /spl theta/) with an environmental parameter /spl theta/ can be approximated to any accuracy by an MLP with LASTMs whose long-term memory is independent of /spl theta/. This independency of /spl theta/ allows the long-term memory to be determined in an a priori training and allows the online adjustment of only the short-term memory for adapting to the environmental parameter /spl theta/. The benefits of using an MLP with LASTMs include less online computation, no poor local extrema to fall into, and much more timely and better adaptation. Numerical examples illustrate that these benefits are realized satisfactorily.
Published in: IEEE Transactions on Neural Networks ( Volume: 13, Issue: 1, January 2002)
DOI: 10.1109/72.977262