Title :
Echo State Gaussian Process
Author :
Chatzis, Sotirios P. ; Demiris, Yiannis
Author_Institution :
Dept. of Electr. & Electron. Eng., Imperial Coll. London, London, UK
Abstract :
Echo state networks (ESNs) constitute a novel approach to recurrent neural network (RNN) training, with an RNN (the reservoir) being generated randomly, and only a readout being trained using a simple computationally efficient algorithm. ESNs have greatly facilitated the practical application of RNNs, outperforming classical approaches on a number of benchmark tasks. In this paper, we introduce a novel Bayesian approach toward ESNs, the echo state Gaussian process (ESGP). The ESGP combines the merits of ESNs and Gaussian processes to provide a more robust alternative to conventional reservoir computing networks while also offering a measure of confidence on the generated predictions (in the form of a predictive distribution). We exhibit the merits of our approach in a number of applications, considering both benchmark datasets and real-world applications, where we show that our method offers a significant enhancement in the dynamical data modeling capabilities of ESNs. Additionally, we also show that our method is orders of magnitude more computationally efficient compared to existing Gaussian process-based methods for dynamical data modeling, without compromises in the obtained predictive performance.
Keywords :
Bayes methods; Gaussian processes; data models; learning (artificial intelligence); nonlinear dynamical systems; recurrent neural nets; Bayesian approach; ESGP; ESN; RNN training; dynamical data modeling; echo state Gaussian process; echo state networks; recurrent neural network; reservoir computing networks; Computational modeling; Kernel; Neurons; Predictive models; Recurrent neural networks; Reservoirs; Training; Bayesian inference; Gaussian process; reservoir computing; sequential data modeling; Bayes Theorem; Humans; Learning; Neural Networks (Computer); Neurons; Nonlinear Dynamics; Normal Distribution; Pattern Recognition, Automated; Psychomotor Agitation; Psychomotor Performance;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2011.2162109