The study of deep Recurrent Neural Network (RNN) models represents a research topic of increasing interest. In this paper we investigate layered recurrent architectures under a dynamical system point of view, focusing on characterizing the fundamental aspect of stability. To this end we provide a framework that allows the analysis of deepRNN dynamical regimes through the study of the maximum among the local Lyapunov exponents. Applied to the case of Reservoir Computing networks, our investigation also provides insights on the true merits of layering in RNN architectures, effectively showing how increasing the number of layers eventually results in progressively less stable global dynamics
In this paper, we elaborate over the well-known interpretability issue in echo-state networks (ESNs)...
Many practical applications of neural networks require the identification of nonlinear deterministic...
This paper is devoted to studying both the global and local stability of dynamical neural networks. ...
The study of deep Recurrent Neural Network (RNN) models represents a research topic of increasing in...
The analysis of deep Recurrent Neural Network (RNN) models represents a research area of increasing ...
In this paper we propose an empirical analysis of deep recurrent neural networks (RNNs) with stacked...
6 pages, 4 figuresWe compute how small input perturbations affect the output of deep neural networks...
In this paper, we propose an empirical analysis of deep recurrent neural network (RNN) architectures...
Reservoir computing (RC) is a popular class of recurrent neural networks (RNNs) with untrained dynam...
Reservoir Computing (RC) is a popular methodology for the efficient design of Recurrent Neural Netwo...
In this paper we derive a condition for robust local stability of multilayer recurrent neural netwo...
We consider the method of Reduction of Dissipativity Domain to prove global Lyapunov stability of Di...
The Recurrent Neural Networks (RNNs) represent an important class of bio-inspired learning machines ...
Recently, studies on deep Reservoir Computing (RC) highlighted the role of layering in deep recurren...
The extension of deep learning towards temporal data processing is gaining an increasing research i...
In this paper, we elaborate over the well-known interpretability issue in echo-state networks (ESNs)...
Many practical applications of neural networks require the identification of nonlinear deterministic...
This paper is devoted to studying both the global and local stability of dynamical neural networks. ...
The study of deep Recurrent Neural Network (RNN) models represents a research topic of increasing in...
The analysis of deep Recurrent Neural Network (RNN) models represents a research area of increasing ...
In this paper we propose an empirical analysis of deep recurrent neural networks (RNNs) with stacked...
6 pages, 4 figuresWe compute how small input perturbations affect the output of deep neural networks...
In this paper, we propose an empirical analysis of deep recurrent neural network (RNN) architectures...
Reservoir computing (RC) is a popular class of recurrent neural networks (RNNs) with untrained dynam...
Reservoir Computing (RC) is a popular methodology for the efficient design of Recurrent Neural Netwo...
In this paper we derive a condition for robust local stability of multilayer recurrent neural netwo...
We consider the method of Reduction of Dissipativity Domain to prove global Lyapunov stability of Di...
The Recurrent Neural Networks (RNNs) represent an important class of bio-inspired learning machines ...
Recently, studies on deep Reservoir Computing (RC) highlighted the role of layering in deep recurren...
The extension of deep learning towards temporal data processing is gaining an increasing research i...
In this paper, we elaborate over the well-known interpretability issue in echo-state networks (ESNs)...
Many practical applications of neural networks require the identification of nonlinear deterministic...
This paper is devoted to studying both the global and local stability of dynamical neural networks. ...