A synaptic connectivity model is assembled on a spiking neuron network aiming to build up a dynamic pattern recognition system. The connection architecture includes gap junctions and both inhibitory and excitatory chemical synapses based on Hebb’s hypothesis. The network evolution resulting from external stimulus is sampled in a properly defined frequency space. Neurons’ responses to different current injections are mapped onto a subspace using Principal Component Analysis. Departing from the base attractor, related to a quiescent state, different external stimuli drive the network to different fixed points through specific trajectories in this subspace
We study a model of spiking neurons, with recurrent connections that result from learning a set of s...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
The cerebral cortex exhibits distinct connectivity patterns on different length scales. Long range c...
AbstractA synaptic connectivity model is assembled on a spiking neuron network aiming to build up a ...
<p>(A) Raster plot showing network spiking during learning () and auto-associative recall (). The ve...
<p>The single network is fully connected. The excitatory neurons are divided into N selective pools ...
The Hopfield network (Hopfield, 1982,1984) provides a simple model of an associative memory in a neu...
We are interested in self-organization and adaptation in intelligent systems that are robustly coupl...
(A) Network structure emerging after learning 2 training stimuli. The modeled neuronal populations a...
The most biologically-inspired artificial neurons are those of the third generation, and are termed ...
International audienceSpiking Neuron Networks (SNNs) are often referred to as the 3rd generation ofn...
In this paper, we propose a simple supervised associative learning approach for spiking neural netwo...
<p>A. Network architecture. The network is composed of two interacting modalities. Each modality rec...
In this paper, we propose a simple supervised associative learning approach for spiking neural netwo...
The problem we address in this paper is that of finding effective and parsimonious patterns of conne...
We study a model of spiking neurons, with recurrent connections that result from learning a set of s...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
The cerebral cortex exhibits distinct connectivity patterns on different length scales. Long range c...
AbstractA synaptic connectivity model is assembled on a spiking neuron network aiming to build up a ...
<p>(A) Raster plot showing network spiking during learning () and auto-associative recall (). The ve...
<p>The single network is fully connected. The excitatory neurons are divided into N selective pools ...
The Hopfield network (Hopfield, 1982,1984) provides a simple model of an associative memory in a neu...
We are interested in self-organization and adaptation in intelligent systems that are robustly coupl...
(A) Network structure emerging after learning 2 training stimuli. The modeled neuronal populations a...
The most biologically-inspired artificial neurons are those of the third generation, and are termed ...
International audienceSpiking Neuron Networks (SNNs) are often referred to as the 3rd generation ofn...
In this paper, we propose a simple supervised associative learning approach for spiking neural netwo...
<p>A. Network architecture. The network is composed of two interacting modalities. Each modality rec...
In this paper, we propose a simple supervised associative learning approach for spiking neural netwo...
The problem we address in this paper is that of finding effective and parsimonious patterns of conne...
We study a model of spiking neurons, with recurrent connections that result from learning a set of s...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
The cerebral cortex exhibits distinct connectivity patterns on different length scales. Long range c...