Echo state networks (ESNs) are large, random recurrent neural networks with a single trained linear readout layer. Despite the untrained nature of the recurrent weights, they are capable of performing universal computations on temporal input data, which makes them interesting for both theoretical research and practical applications. The key to their success lies in the fact that the network computes a broad set of nonlinear, spatiotemporal mappings of the input data, on which linear regression or classification can easily be performed. One could consider the reservoir as a spatiotemporal kernel, in which the mapping to a high-dimensional space is computed explicitly. In this letter, we build on this idea and extend the concept of ESNs to in...
In this paper, we formally deduce a new computational model, with a recurrent structure, by means of...
The echo state property is a key for the design and training of recur-rent neural networks within th...
We introduce a novel class of Reservoir Computing (RC) models, a family of efficiently trainable Rec...
Echo State Networks (ESNs) represent a successful methodology for efficient modeling of Recurrent Ne...
As one of the most important paradigms of recurrent neural networks, the echo state network (ESN) ha...
Recurrent neural networks are successfully used for tasks like time series processing and system ide...
In this paper, we present a novel architecture and learning algorithm for a multilayered echo state ...
In this paper we present the Tree Echo State Network (TreeESN) model, generalizing the paradigm of R...
Echo State Networks (ESNs) is an approach to the recurrent neural network (RNN) training, based on g...
Recurrent neural networks (RNNs) are successfully employed in processing information from temporal d...
Cortical networks are strongly recurrent, and neurons have intrinsic temporal dynamics. This sets th...
Abstract—New method for modeling nonlinear systems called the echo state networks (ESNs) has been pr...
Abstract—In the last decade, a new computational paradigm was introduced in the field of Machine Lea...
In this paper, we elaborate over the well-known interpretability issue in echo-state networks (ESNs)...
Echo State Networks and Liquid State Machines introduced a new paradigm in artificial recurrent neur...
In this paper, we formally deduce a new computational model, with a recurrent structure, by means of...
The echo state property is a key for the design and training of recur-rent neural networks within th...
We introduce a novel class of Reservoir Computing (RC) models, a family of efficiently trainable Rec...
Echo State Networks (ESNs) represent a successful methodology for efficient modeling of Recurrent Ne...
As one of the most important paradigms of recurrent neural networks, the echo state network (ESN) ha...
Recurrent neural networks are successfully used for tasks like time series processing and system ide...
In this paper, we present a novel architecture and learning algorithm for a multilayered echo state ...
In this paper we present the Tree Echo State Network (TreeESN) model, generalizing the paradigm of R...
Echo State Networks (ESNs) is an approach to the recurrent neural network (RNN) training, based on g...
Recurrent neural networks (RNNs) are successfully employed in processing information from temporal d...
Cortical networks are strongly recurrent, and neurons have intrinsic temporal dynamics. This sets th...
Abstract—New method for modeling nonlinear systems called the echo state networks (ESNs) has been pr...
Abstract—In the last decade, a new computational paradigm was introduced in the field of Machine Lea...
In this paper, we elaborate over the well-known interpretability issue in echo-state networks (ESNs)...
Echo State Networks and Liquid State Machines introduced a new paradigm in artificial recurrent neur...
In this paper, we formally deduce a new computational model, with a recurrent structure, by means of...
The echo state property is a key for the design and training of recur-rent neural networks within th...
We introduce a novel class of Reservoir Computing (RC) models, a family of efficiently trainable Rec...