DocumentCode :
2664315
Title :
Recurrent Expectation Maximization Neural Modeling
Author :
Mirikitani, Derrick ; Nikolaev, Nikolay
Author_Institution :
Dept. of Comput. Sci., Univ. of London, London, UK
fYear :
2008
fDate :
10-12 Dec. 2008
Firstpage :
674
Lastpage :
679
Abstract :
A probabilistic approach to training recurrent neural networks is developed for maximum likelihood estimation of network weights, model uncertainty, and noise in the data. We elaborate on an Expectation Maximization algorithm where by a forward filtering backward smoothing framework is utilized for estimation of network weights in the Expectation step, and in the Maximization step, the model uncertainty and measurement noise estimates are computed. Experimental investigations on real world data sets show that the developed algorithm outperforms the standard real time recurrent learning and extended Kalman Filtering algorithms for recurrent networks, as well as other contemporary nonlinear models, on time series modeling tasks.
Keywords :
Kalman filters; expectation-maximisation algorithm; learning (artificial intelligence); recurrent neural nets; time series; backward smoothing; expectation maximization algorithm; expectation maximization neural modeling; extended Kalman filtering; forward filtering; maximum likelihood estimation; model uncertainty; recurrent neural modeling; recurrent neural networks training; time series modeling; Computer science; Feeds; Filtering algorithms; Kalman filters; Neurons; Noise measurement; Nonlinear dynamical systems; Recurrent neural networks; Signal processing algorithms; Smoothing methods; expectation maximization; recurrent neural network;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computational Intelligence for Modelling Control & Automation, 2008 International Conference on
Conference_Location :
Vienna
Print_ISBN :
978-0-7695-3514-2
Type :
conf
DOI :
10.1109/CIMCA.2008.97
Filename :
5172706
Link To Document :
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