International audienceWe review and extend the previous work where a model was introduced for Hopfield-type neural networks, which allows for the existence of heteroclinic dynamics between steady patterns. This dynamics is a mathematical model of periodic or aperiodic switching between stored information items in the brain, in particular, in the context of sequential memory or cognitive tasks as observed in experiments. The basic question addressed in this work is whether, given a sequence of steady patterns, it is possible by applying classical learning rules to build a matrix of connections between neurons in the network, such that a heteroclinic dynamics links these patterns. It has been shown previously that the answer is positive in th...
Systems of globally coupled phase oscillators can have robust attractors that are heteroclinic netwo...
International audienceThis paper addresses the existence of Hopf bifurcations in a directed acyclic ...
Local dynamics in a neural network are described by a two-dimensional (backpropagation or Hebbian) m...
Learning or memory formation are associated with the strengthening of the synaptic connections betwe...
Cyclic patterns of neuronal activity are ubiquitous in animal nervous systems, and partially respons...
The heteroclinic cycles and channels are mathematical images of a sequential switching activity in n...
Abstract. Heteroclinic networks are invariant sets containing more than one heteroclinic cycle. Such...
We study the dynamics near heteroclinic networks for which all eigenvalues of the linearization at t...
Networks of interacting nodes connected by edges arise in almost every branch of scientific inquiry....
The synchronization of oscillatory activity in networks of neural networks is usually implemented th...
We analyze the storage capacity of the Hopfield model with spatially correlated patterns ¸ i (i.e....
Abstract We review some examples of dynamics displaying sequential switching for systems of coupled ...
A new learning algorithm for the storage of static and periodic attractors in biologically inspired ...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
ABSTRACT. We propose to study the dynamics ofMcCulloch-Pitts’neural network and general Boolean netw...
Systems of globally coupled phase oscillators can have robust attractors that are heteroclinic netwo...
International audienceThis paper addresses the existence of Hopf bifurcations in a directed acyclic ...
Local dynamics in a neural network are described by a two-dimensional (backpropagation or Hebbian) m...
Learning or memory formation are associated with the strengthening of the synaptic connections betwe...
Cyclic patterns of neuronal activity are ubiquitous in animal nervous systems, and partially respons...
The heteroclinic cycles and channels are mathematical images of a sequential switching activity in n...
Abstract. Heteroclinic networks are invariant sets containing more than one heteroclinic cycle. Such...
We study the dynamics near heteroclinic networks for which all eigenvalues of the linearization at t...
Networks of interacting nodes connected by edges arise in almost every branch of scientific inquiry....
The synchronization of oscillatory activity in networks of neural networks is usually implemented th...
We analyze the storage capacity of the Hopfield model with spatially correlated patterns ¸ i (i.e....
Abstract We review some examples of dynamics displaying sequential switching for systems of coupled ...
A new learning algorithm for the storage of static and periodic attractors in biologically inspired ...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
ABSTRACT. We propose to study the dynamics ofMcCulloch-Pitts’neural network and general Boolean netw...
Systems of globally coupled phase oscillators can have robust attractors that are heteroclinic netwo...
International audienceThis paper addresses the existence of Hopf bifurcations in a directed acyclic ...
Local dynamics in a neural network are described by a two-dimensional (backpropagation or Hebbian) m...