International audienceChaotic neural networks have received a great deal of attention these last years. In this paper we establish a precise correspondence between the so-called chaotic iterations and a particular class of artificial neural networks: global recurrent multi-layer perceptrons. We show formally that it is possible to make these iterations behave chaotically, as defined by Devaney, and thus we obtain the first neural networks proven chaotic. Several neural networks with different architectures are trained to exhibit a chaotical behavior
Published version of a chapter in the book: Transactions on Computational Collective Intelligence XI...
The neural net computer simulations which will be presented here are based on the acceptance of a se...
Most theoretical studies of the computational capabilities of balanced, recurrent E/I networks assu...
Abstract—Chaotic neural networks have received a great deal of attention these last years. In this p...
International audienceMany research works deal with chaotic neural networks for various fields of ap...
International audienceChaotic neural networks have received a great deal of attention these last yea...
Summary. Traditional Pattern Recognition (PR) systems work with the model that the object to be reco...
International audienceChaotic iterations, a tool formerly used in distributed computing, has recentl...
AbstractIt is proposed that chaotic attractors incorporated in neural net models can represent class...
Inspired by chaotic firing of neurons in the brain, we propose ChaosNet—a novel chaos based artifici...
tructure of a strange attractor in the phase space without getting stuck at local minima. This abili...
Accepted version of an article the book: 2011 IEEE International Conference on Computational Intelli...
Submitted to the Department of Mathematics on Apr 29, 2019, in partial fulfillment of the requireme...
ABSTRACT. We propose to study the dynamics ofMcCulloch-Pitts’neural network and general Boolean netw...
Chaotic Pattern Recognition (PR) is a relatively new sub-field of PR in which a system, which demons...
Published version of a chapter in the book: Transactions on Computational Collective Intelligence XI...
The neural net computer simulations which will be presented here are based on the acceptance of a se...
Most theoretical studies of the computational capabilities of balanced, recurrent E/I networks assu...
Abstract—Chaotic neural networks have received a great deal of attention these last years. In this p...
International audienceMany research works deal with chaotic neural networks for various fields of ap...
International audienceChaotic neural networks have received a great deal of attention these last yea...
Summary. Traditional Pattern Recognition (PR) systems work with the model that the object to be reco...
International audienceChaotic iterations, a tool formerly used in distributed computing, has recentl...
AbstractIt is proposed that chaotic attractors incorporated in neural net models can represent class...
Inspired by chaotic firing of neurons in the brain, we propose ChaosNet—a novel chaos based artifici...
tructure of a strange attractor in the phase space without getting stuck at local minima. This abili...
Accepted version of an article the book: 2011 IEEE International Conference on Computational Intelli...
Submitted to the Department of Mathematics on Apr 29, 2019, in partial fulfillment of the requireme...
ABSTRACT. We propose to study the dynamics ofMcCulloch-Pitts’neural network and general Boolean netw...
Chaotic Pattern Recognition (PR) is a relatively new sub-field of PR in which a system, which demons...
Published version of a chapter in the book: Transactions on Computational Collective Intelligence XI...
The neural net computer simulations which will be presented here are based on the acceptance of a se...
Most theoretical studies of the computational capabilities of balanced, recurrent E/I networks assu...