In this paper, we investigate the influence of neural plasticity on the learning performance of echo state networks (ESNs) and supervised learning algorithms in training readout connections for two time series prediction problems including the sunspot time series and the Mackey Glass chaotic system. We implement two different plasticity rules that are expected to improve the prediction performance, namely, anti-Oja learning rule and the Bienenstock-Cooper-Munro (BCM) learning rule combined with both offline and online learning of the readout connections. Our experimental results have demonstrated that the neural plasticity can more significantly enhance the learning in offline learning than in online learning
Echo State neural networks (ESN), which are a special case of recurrent neural networks, are studied...
Abstract. We present a method for learning nonlinear systems, echo state networks (ESNs). ESNs emplo...
The dynamics of physiological systems are significantly impacted by delay. The time-delay caused by ...
In this paper, we investigate the influence of neural plasticity on the learning performance of echo...
Recently, echo state network (ESN) has attracted a great deal of attention due to its high accuracy ...
Wang X, Jin Y, Hao K. Computational Modeling of Structural Synaptic Plasticity in Echo State Network...
Modelling time series is quite a difficult task. The last recent years, reservoir computing approach...
Abstract. We present a method for learning nonlinear systems, echo state networks (ESNs). ESNs emplo...
International audienceModelling time series is quite a difficult task. The last recent years, reserv...
We present a method for learning nonlinear systems, echo state networks (ESNs). ESNs employ artifici...
We present a method for learning nonlinear systems, echo state networks (ESNs). ESNs employ artifici...
As one of the most important paradigms of recurrent neural networks, the echo state network (ESN) ha...
Recurrent neural networks (RNN) enable to model dynamical sys- tems with variable input length. Thei...
Interest in chaotic time series prediction has grown in recent years due to its multiple application...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
Echo State neural networks (ESN), which are a special case of recurrent neural networks, are studied...
Abstract. We present a method for learning nonlinear systems, echo state networks (ESNs). ESNs emplo...
The dynamics of physiological systems are significantly impacted by delay. The time-delay caused by ...
In this paper, we investigate the influence of neural plasticity on the learning performance of echo...
Recently, echo state network (ESN) has attracted a great deal of attention due to its high accuracy ...
Wang X, Jin Y, Hao K. Computational Modeling of Structural Synaptic Plasticity in Echo State Network...
Modelling time series is quite a difficult task. The last recent years, reservoir computing approach...
Abstract. We present a method for learning nonlinear systems, echo state networks (ESNs). ESNs emplo...
International audienceModelling time series is quite a difficult task. The last recent years, reserv...
We present a method for learning nonlinear systems, echo state networks (ESNs). ESNs employ artifici...
We present a method for learning nonlinear systems, echo state networks (ESNs). ESNs employ artifici...
As one of the most important paradigms of recurrent neural networks, the echo state network (ESN) ha...
Recurrent neural networks (RNN) enable to model dynamical sys- tems with variable input length. Thei...
Interest in chaotic time series prediction has grown in recent years due to its multiple application...
An algorithm is introduced that trains a neural network to identify chaotic dynamics from a single m...
Echo State neural networks (ESN), which are a special case of recurrent neural networks, are studied...
Abstract. We present a method for learning nonlinear systems, echo state networks (ESNs). ESNs emplo...
The dynamics of physiological systems are significantly impacted by delay. The time-delay caused by ...