This is the final version. Available on open access from Elsevier via the DOI in this recordThe importance of understanding the nonlinear dynamics of neural systems, and the relation to cognitive systems more generally, has been recognized for a long time. Approaches that analyse neural systems in terms of attractors of autonomous networks can be successful in explaining system behaviours in the input-free case. Nonetheless, a computational system usually needs inputs from its environment to effectively solve problems, and this necessitates a non-autonomous framework where typically the effects of a changing environment can be studied. In this review we highlight a variety of network attractors that can exist in autonomous sys...
Attractor properties of a popular discrete-time neural network model are illustrated through numeric...
Neurodynamics is the application of dynamical systems theory (DST) to the analysis of the structure ...
We present a neural model for a singular-continuous nowhere-differentiable (SCND) attractors. This m...
Abstract. Slow adaption processes, like synaptic and intrinsic plastic-ity, abound in the brain and ...
The tools of weakly coupled phase oscillator theory have had a profound impact on the neuroscience c...
The tools of weakly coupled phase oscillator theory have had a profound impact on the neuroscience c...
The field of neural network modelling has grown up on the premise that the massively parallel distri...
One way to understand the brain is in terms of the computations it performs that allow an organism t...
Behavior is the product of three intertwining dynamics: of the world, of the body and of internal co...
A computational view of how perception and cognition can be modeled as dynamic patterns of transie...
81 pages, 91 figures, review paperInternational audienceThis paper presents an overview of some tech...
Abstract. Based on theoretical issues and neurobiological evidence, considerable interest has recent...
Chaos in dynamical systems potentially provides many different dynamical states arising from a singl...
Two issues concerning the application of continuous attractors in neural systems are investigated: t...
We investigate the dynamics of continuous attractor neural networks (CANNs). Due to the translationa...
Attractor properties of a popular discrete-time neural network model are illustrated through numeric...
Neurodynamics is the application of dynamical systems theory (DST) to the analysis of the structure ...
We present a neural model for a singular-continuous nowhere-differentiable (SCND) attractors. This m...
Abstract. Slow adaption processes, like synaptic and intrinsic plastic-ity, abound in the brain and ...
The tools of weakly coupled phase oscillator theory have had a profound impact on the neuroscience c...
The tools of weakly coupled phase oscillator theory have had a profound impact on the neuroscience c...
The field of neural network modelling has grown up on the premise that the massively parallel distri...
One way to understand the brain is in terms of the computations it performs that allow an organism t...
Behavior is the product of three intertwining dynamics: of the world, of the body and of internal co...
A computational view of how perception and cognition can be modeled as dynamic patterns of transie...
81 pages, 91 figures, review paperInternational audienceThis paper presents an overview of some tech...
Abstract. Based on theoretical issues and neurobiological evidence, considerable interest has recent...
Chaos in dynamical systems potentially provides many different dynamical states arising from a singl...
Two issues concerning the application of continuous attractors in neural systems are investigated: t...
We investigate the dynamics of continuous attractor neural networks (CANNs). Due to the translationa...
Attractor properties of a popular discrete-time neural network model are illustrated through numeric...
Neurodynamics is the application of dynamical systems theory (DST) to the analysis of the structure ...
We present a neural model for a singular-continuous nowhere-differentiable (SCND) attractors. This m...