Neural networks for time-varying data


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

Murtagh, Fionn

Data(s)

01/12/1990

Resumo

This paper reviews some basic issues and methods involved in using neural networks to respond in a desired fashion to a temporally-varying environment. Some popular network models and training methods are introduced. A speech recognition example is then used to illustrate the central difficulty of temporal data processing: learning to notice and remember relevant contextual information. Feedforward network methods are applicable to cases where this problem is not severe. The application of these methods are explained and applications are discussed in the areas of pure mathematics, chemical and physical systems, and economic systems. A more powerful but less practical algorithm for temporal problems, the moving targets algorithm, is sketched and discussed. For completeness, a few remarks are made on reinforcement learning.

Formato

application/pdf

Identificador

http://eprints.aston.ac.uk/344/1/misc91-006.pdf

Rohwer, Richard (1990). Neural networks for time-varying data. IN: Neural Networks for Statistical and Economic Data. 1990-12-10 - 1990-12-11.

Relação

http://eprints.aston.ac.uk/344/

Tipo

Conference or Workshop Item

PeerReviewed