The 'moving targets' training algorithm


Autoria(s): Rohwer, Richard
Contribuinte(s)

Kindermann, J.

Linden, A.

Data(s)

1990

Resumo

A simple method for training the dynamical behavior of a neural network is derived. It is applicable to any training problem in discrete-time networks with arbitrary feedback. The method resembles back-propagation in that it is a least-squares, gradient-based optimization method, but the optimization is carried out in the hidden part of state space instead of weight space. A straightforward adaptation of this method to feedforward networks offers an alternative to training by conventional back-propagation. Computational results are presented for simple dynamical training problems, with varied success. The failures appear to arise when the method converges to a chaotic attractor. A patch-up for this problem is proposed. The patch-up involves a technique for implementing inequality constraints which may be of interest in its own right.

Formato

application/pdf

Identificador

http://eprints.aston.ac.uk/370/1/misc90-001.pdf

Rohwer, Richard (1990). The 'moving targets' training algorithm. IN: Distributed Adaptive Information Processing (DANIP). 1990-01-01 - 1990-01-01. (Unpublished)

Relação

http://eprints.aston.ac.uk/370/

Tipo

Conference or Workshop Item

PeerReviewed