When a dynamical system with multiple point attractors is released from an arbitrary initial condition it will relax into a configuration that locally resolves the constraints or opposing forces between interdependent state variables. However, when there are many conflicting interdependencies between variables, finding a configuration that globally optimises these constraints by this method is unlikely, or may take many attempts. Here we show that a simple distributed mechanism can incrementally alter a dynamical system such that it finds lower energy configurations, more reliably and more quickly. Specifically, when Hebbian learning is applied to the connections of a simple dynamical system undergoing repeated relaxation, the system will d...
Starting from a randomly-oriented complete graph, an algorithm constructs equally-sized basins of at...
Coupling local, slowly adapting variables to an attractor network allows to destabilize all attracto...
Attractor properties of a popular discrete-time neural network model are illustrated through numeric...
In neural networks, two specific dynamical behaviours are well known: 1) Networks naturally find pat...
Complex adaptive systems composed of self-interested agents can in some circumstances self-organise ...
We discuss the adaptive behaviour of a collection of heterogeneous dynamical systems interacting via...
Simple distributed strategies that modify the behaviour of selfish individuals in a manner that enha...
Modular organization characterizes many complex networks occurring in nature, including the brain. I...
In some circumstances complex adaptive systems composed of numerous self-interested agents can self-...
Poster presentation A central problem in neuroscience is to bridge local synaptic plasticity and the...
We consider the multitasking associative network in the low-storage limit and we study its phase dia...
We associate learning in living systems with the shaping of the velocity vector field of a dynamical...
Through a redefinition of patterns in a Hopfield-like model, we introduce and develop an approach to...
Large coupled networks of individual entities arise in multiple contexts in nature and engineered sy...
Systems of globally coupled phase oscillators can have robust attractors that are heteroclinic netwo...
Starting from a randomly-oriented complete graph, an algorithm constructs equally-sized basins of at...
Coupling local, slowly adapting variables to an attractor network allows to destabilize all attracto...
Attractor properties of a popular discrete-time neural network model are illustrated through numeric...
In neural networks, two specific dynamical behaviours are well known: 1) Networks naturally find pat...
Complex adaptive systems composed of self-interested agents can in some circumstances self-organise ...
We discuss the adaptive behaviour of a collection of heterogeneous dynamical systems interacting via...
Simple distributed strategies that modify the behaviour of selfish individuals in a manner that enha...
Modular organization characterizes many complex networks occurring in nature, including the brain. I...
In some circumstances complex adaptive systems composed of numerous self-interested agents can self-...
Poster presentation A central problem in neuroscience is to bridge local synaptic plasticity and the...
We consider the multitasking associative network in the low-storage limit and we study its phase dia...
We associate learning in living systems with the shaping of the velocity vector field of a dynamical...
Through a redefinition of patterns in a Hopfield-like model, we introduce and develop an approach to...
Large coupled networks of individual entities arise in multiple contexts in nature and engineered sy...
Systems of globally coupled phase oscillators can have robust attractors that are heteroclinic netwo...
Starting from a randomly-oriented complete graph, an algorithm constructs equally-sized basins of at...
Coupling local, slowly adapting variables to an attractor network allows to destabilize all attracto...
Attractor properties of a popular discrete-time neural network model are illustrated through numeric...