Artificial neural networks, taking inspiration from biological neurons, have become an invaluable tool for machine learning applications. Recent studies have developed techniques to effectively tune the connectivity of sparsely-connected artificial neural networks, which have the potential to be more computationally efficient than their fully-connected counterparts and more closely resemble the architectures of biological systems. We here present a normalisation, based on the biophysical behaviour of neuronal dendrites receiving distributed synaptic inputs, that divides the weight of an artificial neuron’s afferent contacts by their number. We apply this dendritic normalisation to various sparsely-connected feedforward network architectures...
How can neural networks learn to efficiently represent complex and high-dimensional inputs via local...
The integration of excitatory inputs in dendrites is non-linear: multiple excita-tory inputs can pro...
International audienceNonlinear dendritic integration is thought to increase the computational abili...
Inspired by the physiology of neuronal systems in the brain, artificial neural networks have become ...
A, Schematic of dendritic normalisation. A neuron receives inputs across its dendritic tree (dark gr...
In this paper, we discuss the nonlinear computational power provided by dendrites in biological and ...
The discovery of binary dendritic events such as local NMDA spikes in dendritic subbranches led to t...
How neurons process their inputs crucially determines the dynamics of biological and artificial neur...
The significant role of dendritic processing within neuronal networks has become increasingly clear....
This article highlights specific features of biological neurons and their dendritic trees, whose ado...
Synaptic clustering on neuronal dendrites has been hypothesized to play an important role in impleme...
Are single neocortical neurons as powerful as multi-layered networks? A recent compartmental modelin...
Artificial neural networks (ANNs) are usually homoge-nous in respect to the used learning algorithms...
A, Schematic of a sparsely connected network with 3 hidden layers. The output layer is fully connect...
A major challenge in neuroscience is to reverse engineer the brain and understand its information pr...
How can neural networks learn to efficiently represent complex and high-dimensional inputs via local...
The integration of excitatory inputs in dendrites is non-linear: multiple excita-tory inputs can pro...
International audienceNonlinear dendritic integration is thought to increase the computational abili...
Inspired by the physiology of neuronal systems in the brain, artificial neural networks have become ...
A, Schematic of dendritic normalisation. A neuron receives inputs across its dendritic tree (dark gr...
In this paper, we discuss the nonlinear computational power provided by dendrites in biological and ...
The discovery of binary dendritic events such as local NMDA spikes in dendritic subbranches led to t...
How neurons process their inputs crucially determines the dynamics of biological and artificial neur...
The significant role of dendritic processing within neuronal networks has become increasingly clear....
This article highlights specific features of biological neurons and their dendritic trees, whose ado...
Synaptic clustering on neuronal dendrites has been hypothesized to play an important role in impleme...
Are single neocortical neurons as powerful as multi-layered networks? A recent compartmental modelin...
Artificial neural networks (ANNs) are usually homoge-nous in respect to the used learning algorithms...
A, Schematic of a sparsely connected network with 3 hidden layers. The output layer is fully connect...
A major challenge in neuroscience is to reverse engineer the brain and understand its information pr...
How can neural networks learn to efficiently represent complex and high-dimensional inputs via local...
The integration of excitatory inputs in dendrites is non-linear: multiple excita-tory inputs can pro...
International audienceNonlinear dendritic integration is thought to increase the computational abili...