In many complex systems, elementary units live in a chaotic environment and need to adapt their strategies to perform a task, by extracting information from the environment and controlling the feedback loop on it. One of the main example of systems of this kind is provided by recurrent neural networks. In this case, recurrent connections between neurons drive chaotic behavior and when learning takes place, the response of the system to a perturbation should take into account also its feedback on the dynamics of the network itself. In this work, we consider an abstract model of a high-dimensional chaotic system as a paradigmatic model and study its dynamics. We study the model under two particular settings: Hebbian driving and FORCE training...
Abstract. We study unsupervised Hebbian learning in a recurrent network in which synapses have a fin...
We study a discrete-time, large-scale, recurrent neural network model. The couplings are set randoml...
Dynamical systems have been used to describe a vast range of phenomena, including physical sciences...
ArticleWe present a mathematical analysis of the effects of Hebbian learning in random recurrent neu...
Training recurrent neural networks (RNNs) is a long-standing open problem both in theoretical neuros...
We propose Hebb-like learning rules to store a static pattern as a dynamical attractor in a neural n...
Many forms of recurrent neural networks can be understood in terms of dynamic systems theory of diff...
The neural net computer simulations which will be presented here are based on the acceptance of a se...
We present a mathematical analysis of the effects of Hebbian learning in random recurrent neural net...
We evolve small continuous-time recurrent neural networks with fixed weights that perform Hebbian le...
The aim of the present paper is to study the effects of Hebbian learning in random recurrent neural ...
Thesis (Ph.D.)--Massachusetts Institute of Technology, Dept. of Brain and Cognitive Sciences, 2002.I...
Attractor properties of a popular discrete-time neural network model are illustrated through numeric...
International audienceThe aim of the present paper is to study the effects of Hebbian learning in ra...
We investigate the predictive power of recurrent neural networks for oscillatory systems not only on...
Abstract. We study unsupervised Hebbian learning in a recurrent network in which synapses have a fin...
We study a discrete-time, large-scale, recurrent neural network model. The couplings are set randoml...
Dynamical systems have been used to describe a vast range of phenomena, including physical sciences...
ArticleWe present a mathematical analysis of the effects of Hebbian learning in random recurrent neu...
Training recurrent neural networks (RNNs) is a long-standing open problem both in theoretical neuros...
We propose Hebb-like learning rules to store a static pattern as a dynamical attractor in a neural n...
Many forms of recurrent neural networks can be understood in terms of dynamic systems theory of diff...
The neural net computer simulations which will be presented here are based on the acceptance of a se...
We present a mathematical analysis of the effects of Hebbian learning in random recurrent neural net...
We evolve small continuous-time recurrent neural networks with fixed weights that perform Hebbian le...
The aim of the present paper is to study the effects of Hebbian learning in random recurrent neural ...
Thesis (Ph.D.)--Massachusetts Institute of Technology, Dept. of Brain and Cognitive Sciences, 2002.I...
Attractor properties of a popular discrete-time neural network model are illustrated through numeric...
International audienceThe aim of the present paper is to study the effects of Hebbian learning in ra...
We investigate the predictive power of recurrent neural networks for oscillatory systems not only on...
Abstract. We study unsupervised Hebbian learning in a recurrent network in which synapses have a fin...
We study a discrete-time, large-scale, recurrent neural network model. The couplings are set randoml...
Dynamical systems have been used to describe a vast range of phenomena, including physical sciences...