We exploit the dense structure of nuclei to postulate that in such clusters, the neuronal cells will communicate via soma-to-soma interactions, aswell as through synapses. Using the mathematical structure of the spiking Random Neural Network, we construct a multi-layer architecture for Deep Learning. An efficient training procedure is proposed for this architecture. It is then specialized to multi-channel datasets, and applied to images and sensor-based data
Artificial neural networks are inspired by information processing performed by neural circuits in bi...
Deep neural networks follow a pattern of connectivity that was loosely inspired by neurobiology. The...
This document proposes new methods for training multi-layer and deep spiking neural networks (SNNs),...
We assume that, within the dense clusters of neurons that can be found in nuclei, cells may intercon...
The random neural network (RNN) is a mathematical model for an ``integrate and fire'' spiking networ...
Recent work demonstrated the value of multi clusters of spiking Random Neural Networks (RNN) with de...
Spiking neural networks (SNNs) are inspired by information processing in biology, where sparse and a...
The brain represents and reasons probabilistically about complex stimuli and motor actions using a n...
International audienceIn recent years, deep learning has revolutionized the field of machine learnin...
Large scale distributed systems, such as natural neuronal and artificial systems, have many local in...
Over the past few years, deep neural networks have been at the center of attention in machine learn...
We introduce an algorithm to do backpropagation on a spiking network. Our network is "spiking" in th...
We show that discrete synaptic weights can be efficiently used for learning in large scale neural sy...
Spiking neural networks (SNNs) are believed to be highly computationally and energy efficient for sp...
The spiking neural network (SNN), an emerging brain-inspired computing paradigm, is positioned to en...
Artificial neural networks are inspired by information processing performed by neural circuits in bi...
Deep neural networks follow a pattern of connectivity that was loosely inspired by neurobiology. The...
This document proposes new methods for training multi-layer and deep spiking neural networks (SNNs),...
We assume that, within the dense clusters of neurons that can be found in nuclei, cells may intercon...
The random neural network (RNN) is a mathematical model for an ``integrate and fire'' spiking networ...
Recent work demonstrated the value of multi clusters of spiking Random Neural Networks (RNN) with de...
Spiking neural networks (SNNs) are inspired by information processing in biology, where sparse and a...
The brain represents and reasons probabilistically about complex stimuli and motor actions using a n...
International audienceIn recent years, deep learning has revolutionized the field of machine learnin...
Large scale distributed systems, such as natural neuronal and artificial systems, have many local in...
Over the past few years, deep neural networks have been at the center of attention in machine learn...
We introduce an algorithm to do backpropagation on a spiking network. Our network is "spiking" in th...
We show that discrete synaptic weights can be efficiently used for learning in large scale neural sy...
Spiking neural networks (SNNs) are believed to be highly computationally and energy efficient for sp...
The spiking neural network (SNN), an emerging brain-inspired computing paradigm, is positioned to en...
Artificial neural networks are inspired by information processing performed by neural circuits in bi...
Deep neural networks follow a pattern of connectivity that was loosely inspired by neurobiology. The...
This document proposes new methods for training multi-layer and deep spiking neural networks (SNNs),...