This work proposes a first study, through empirical assessment, of a deep recursive Neural Network (RecNN) architecture for tree structured data exploiting the efficient design of the Echo State Network (ESN) framework. Three benchmark tasks for trees allow us to assess the potentiality of the novel Deep Tree ESN (DeepTESN) model with respect to the shallow counterpart (Tree ESN) and literature results (including hidden tree Markov models and kernel based approaches) in different conditions and according to both efficiency and predictive performance
In this paper, we formally deduce a new computational model, with a recurrent structure, by means of...
"Echo State Networks" (ESNs) is a new approach of training Recurrent Neuronal Networks. ESNs enable ...
Echo State Networks (ESNs) constitute an emerging approach for efficiently modeling Recurrent Neural...
This work proposes a first study, through empirical assessment, of a deep recursive Neural Network (...
Tree structured data are a flexible tool to properly express many forms of hierarchical information....
The study of deep recurrent neural networks (RNNs) and, in particular, of deep Reservoir Computing ...
In the context of Recurrent Neural Networks (RNN), suitable for the processing of temporal sequences...
In this paper we present the Tree Echo State Network (TreeESN) model, generalizing the paradigm of R...
In this paper, we provide a novel approach to the architectural design of deep Recurrent Neural Netw...
Abstract — The echo state network (ESN) has recently been proposed for modeling complex dynamic syst...
Recurrent Neural Networks are an important tool in the field of Machine Learning, since they represe...
The Reservoir Computing (RC) paradigm represents a stateof- the-art methodology for efficient buildi...
Abstract. Reservoir computing has emerged in the last decade as an alternative to gradient descent m...
As one of the most important paradigms of recurrent neural networks, the echo state network (ESN) ha...
Monitoring of human states from streams of sensor data is an appealing applicative area for Recurren...
In this paper, we formally deduce a new computational model, with a recurrent structure, by means of...
"Echo State Networks" (ESNs) is a new approach of training Recurrent Neuronal Networks. ESNs enable ...
Echo State Networks (ESNs) constitute an emerging approach for efficiently modeling Recurrent Neural...
This work proposes a first study, through empirical assessment, of a deep recursive Neural Network (...
Tree structured data are a flexible tool to properly express many forms of hierarchical information....
The study of deep recurrent neural networks (RNNs) and, in particular, of deep Reservoir Computing ...
In the context of Recurrent Neural Networks (RNN), suitable for the processing of temporal sequences...
In this paper we present the Tree Echo State Network (TreeESN) model, generalizing the paradigm of R...
In this paper, we provide a novel approach to the architectural design of deep Recurrent Neural Netw...
Abstract — The echo state network (ESN) has recently been proposed for modeling complex dynamic syst...
Recurrent Neural Networks are an important tool in the field of Machine Learning, since they represe...
The Reservoir Computing (RC) paradigm represents a stateof- the-art methodology for efficient buildi...
Abstract. Reservoir computing has emerged in the last decade as an alternative to gradient descent m...
As one of the most important paradigms of recurrent neural networks, the echo state network (ESN) ha...
Monitoring of human states from streams of sensor data is an appealing applicative area for Recurren...
In this paper, we formally deduce a new computational model, with a recurrent structure, by means of...
"Echo State Networks" (ESNs) is a new approach of training Recurrent Neuronal Networks. ESNs enable ...
Echo State Networks (ESNs) constitute an emerging approach for efficiently modeling Recurrent Neural...