DocumentCode :
1364507
Title :
Recursive Bayesian Recurrent Neural Networks for Time-Series Modeling
Author :
Mirikitani, Derrick T. ; Nikolaev, Nikolay
Author_Institution :
Dept. of Comput., Univ. of London, London, UK
Volume :
21
Issue :
2
fYear :
2010
Firstpage :
262
Lastpage :
274
Abstract :
This paper develops a probabilistic approach to recursive second-order training of recurrent neural networks (RNNs) for improved time-series modeling. A general recursive Bayesian Levenberg-Marquardt algorithm is derived to sequentially update the weights and the covariance (Hessian) matrix. The main strengths of the approach are a principled handling of the regularization hyperparameters that leads to better generalization, and stable numerical performance. The framework involves the adaptation of a noise hyperparameter and local weight prior hyperparameters, which represent the noise in the data and the uncertainties in the model parameters. Experimental investigations using artificial and real-world data sets show that RNNs equipped with the proposed approach outperform standard real-time recurrent learning and extended Kalman training algorithms for recurrent networks, as well as other contemporary nonlinear neural models, on time-series modeling.
Keywords :
belief networks; covariance matrices; recurrent neural nets; time series; Levenberg Marquardt algorithm; covariance matrix; extended Kalman training algorithms; local weight prior hyperparameters; noise hyperparameter; nonlinear neural models; recursive Bayesian recurrent neural networks; second order training; time series modeling; Bayesian regularization; recurrent neural network (RNN); sequential Levenberg–Marquardt; Algorithms; Bayes Theorem; Computer Simulation; Electricity; Lasers; Neural Networks (Computer); Nonlinear Dynamics; Probability; Time Factors;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/TNN.2009.2036174
Filename :
5361332
Link To Document :
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