DocumentCode :
3238940
Title :
The parametric avalanche: continuous Bayesian estimation and control with a neural network architecture
Author :
Dawes, R.L.
Author_Institution :
Martingale Res. Corp., Allen, TX, USA
fYear :
1989
fDate :
0-0 1989
Abstract :
Summary form only given, as follows. The parametric avalanche is a new neural network architecture which is designed to perform adaptive continuous Bayesian estimation on unpreprocessed large dimensional data. It is adaptive in the sense that it ´learns´ the infinitesimal generators of nonlinear plant trajectories through observation. Then, when presented with previously learned spatio-temporal patterns, it associatively accesses the stored dynamical equations and uses them to generate continuous estimates of the observed system´s state. By using the innovations method for stochastic estimation, the parametric avalanche automatically performs optimal data compression on the stored representations. Use of soliton wave propagation in the threshold field provides a compact representation of stored data, tracking before detection, trajectory extrapolation through loss of signal, and a host of other capabilities.<>
Keywords :
Bayes methods; State estimation; data compression; estimation theory; learning systems; neural nets; parameter estimation; state estimation; Bayesian control; continuous Bayesian estimation; innovations method; learning systems; neural network architecture; nonlinear plant trajectories; optimal data compression; parameter estimation; parametric avalanche; soliton wave propagation; spatio-temporal patterns; state estimation; stochastic estimation; stored dynamical equations; threshold field; unpreprocessed large dimensional data; Bayes procedures; Data compression; Estimation; Learning systems; Neural networks; Parameter estimation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks, 1989. IJCNN., International Joint Conference on
Conference_Location :
Washington, DC, USA
Type :
conf
DOI :
10.1109/IJCNN.1989.118328
Filename :
118328
Link To Document :
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