Modeling deterministic echo state network with loop reservoir

Echo state network (ESN), which efficiently models nonlinear dynamic systems, has been proposed as a special form of recurrent neural network. However, most of the proposed ESNs consist of complex reservoir structures, leading to excessive computational cost. Recently, minimum complexity ESNs were proposed and proved to exhibit high performance and low computational cost. In this paper, we propose a simple deterministic ESN with a loop reservoir, i.e., an ESN with an adjacent-feedback loop reservoir. The novel reservoir is constructed by introducing regular adjacent feedback based on the simplest loop reservoir. Only a single free parameter is tuned, which considerably simplifies the ESN construction. The combination of a simplified reservoir and fewer free parameters provides superior prediction performance. In the benchmark datasets and real-world tasks, our scheme obtains higher prediction accuracy with relatively low complexity, compared to the classic ESN and the minimum complexity ESN. Furthermore, we prove that all the linear ESNs with the simplest loop reservoir possess the same memory capacity, arbitrarily converging to the optimal value.

[1]  Herbert Jaeger,et al.  Adaptive Nonlinear System Identification with Echo State Networks , 2002, NIPS.

[2]  Tokunbo Ogunfunmi,et al.  Adaptive Nonlinear System Identification , 2007 .

[3]  Mustafa C. Ozturk,et al.  An associative memory readout for ESNs with applications to dynamical pattern recognition , 2007, Neural Networks.

[4]  Herbert Jaeger,et al.  Reservoir computing approaches to recurrent neural network training , 2009, Comput. Sci. Rev..

[5]  Helmut Hauser,et al.  Echo state networks with filter neurons and a delay&sum readout , 2010, Neural Networks.

[6]  Harald Haas,et al.  Harnessing Nonlinearity: Predicting Chaotic Systems and Saving Energy in Wireless Communication , 2004, Science.

[7]  Danilo P. Mandic,et al.  Network Architectures for Prediction , 2002 .

[8]  Benjamin Schrauwen,et al.  Stable Output Feedback in Reservoir Computing Using Ridge Regression , 2008, ICANN.

[9]  Paul-Gerhard Plöger,et al.  Echo State Networks used for Motor Control , 2005, Proceedings of the 2005 IEEE International Conference on Robotics and Automation.

[10]  Amir F. Atiya,et al.  New results on recurrent network training: unifying the algorithms and accelerating convergence , 2000, IEEE Trans. Neural Networks Learn. Syst..

[11]  M. Hénon,et al.  A two-dimensional mapping with a strange attractor , 1976 .

[12]  Zhidong Deng,et al.  Collective Behavior of a Small-World Recurrent Neural System With Scale-Free Distribution , 2007, IEEE Transactions on Neural Networks.

[13]  Danilo P. Mandic,et al.  Recurrent Neural Networks for Prediction: Learning Algorithms, Architectures and Stability , 2001 .

[14]  M. Hénon A two-dimensional mapping with a strange attractor , 1976 .

[15]  Danilo P. Mandic,et al.  Recurrent Neural Networks for Prediction: Learning Algorithms, Architectures and Stability , 2001 .

[16]  Min Han,et al.  Support Vector Echo-State Machine for Chaotic Time-Series Prediction , 2007, IEEE Transactions on Neural Networks.

[17]  Eduardo Sontag,et al.  Turing computability with neural nets , 1991 .

[18]  Peter Tiño,et al.  Financial volatility trading using recurrent neural networks , 2001, IEEE Trans. Neural Networks.

[19]  Yiannis Demiris,et al.  Echo State Gaussian Process , 2011, IEEE Transactions on Neural Networks.

[20]  Mohammad Mokhtare,et al.  Intelligent non-linear modelling of an industrial winding process using recurrent local linear neuro-fuzzy networks , 2012, Journal of Zhejiang University SCIENCE C.

[21]  Peter Tiño,et al.  Minimum Complexity Echo State Network , 2011, IEEE Transactions on Neural Networks.

[22]  Friedhelm Schwenker,et al.  Echo State networks and Neural network Ensembles to predict Sunspots activity , 2009, ESANN.

[23]  K. Ikeda,et al.  Optical Turbulence: Chaotic Behavior of Transmitted Light from a Ring Cavity , 1980 .

[24]  John F. Kolen,et al.  Field Guide to Dynamical Recurrent Networks , 2001 .

[25]  Herbert Jaeger,et al.  The''echo state''approach to analysing and training recurrent neural networks , 2001 .

[26]  Yue Joseph Wang,et al.  Nonlinear System Modeling With Random Matrices: Echo State Networks Revisited , 2012, IEEE Transactions on Neural Networks and Learning Systems.

[27]  Danilo P. Mandic,et al.  An Augmented Echo State Network for Nonlinear Adaptive Filtering of Complex Noncircular Signals , 2011, IEEE Transactions on Neural Networks.

[28]  Yoshua Bengio,et al.  Gradient Flow in Recurrent Nets: the Difficulty of Learning Long-Term Dependencies , 2001 .

[29]  Jochen J. Steil,et al.  Memory in Backpropagation-Decorrelation O(N) Efficient Online Recurrent Learning , 2005, ICANN.

[30]  Simon Haykin,et al.  Decoupled echo state networks with lateral inhibition , 2007, Neural Networks.