Computational modeling has been indispensable for understanding how subcellular neuronal features influence circuit processing. However, the role of dendritic computations in network-level operations remains largely unexplored. This is partly because existing tools do not allow the development of realistic and efficient network models that account for dendrites. Current spiking neural networks, although efficient, are usually quite simplistic, overlooking essential dendritic properties. Conversely, circuit models with morphologically detailed neuron models are computationally costly, thus impractical for large-network simulations. To bridge the gap between these two extremes and facilitate the adoption of dendritic features in spiking neura...
This article highlights specific features of biological neurons and their dendritic trees, whose ado...
Neuronal morphologies provide the foundation for the electrical behavior of neurons, the connectomes...
There has been a lack of progress in developing spiking neuron models for pattern classification, wh...
Computational modeling has been indispensable for understanding how subcellular neuronal features in...
Biologically inspired spiking neural networks are highly promising, but remain simplified omitting r...
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...
International audienceNonlinear dendritic integration is thought to increase the computational abili...
The significant role of dendritic processing within neuronal networks has become increasingly clear....
International audienceNonlinear dendritic integration is thought to increase the computational abili...
The significant role of dendritic processing within neuronal networks has become increasingly clear....
Dendrites shape information flow in neurons. Yet, there is little consensus on the level of spatial ...
A reference implementation of → Non-additive coupling enables propagation of synchronous spiking act...
A reference implementation of → Non-additive coupling enables propagation of synchronous spiking act...
This article highlights specific features of biological neurons and their dendritic trees, whose ado...
This article highlights specific features of biological neurons and their dendritic trees, whose ado...
Neuronal morphologies provide the foundation for the electrical behavior of neurons, the connectomes...
There has been a lack of progress in developing spiking neuron models for pattern classification, wh...
Computational modeling has been indispensable for understanding how subcellular neuronal features in...
Biologically inspired spiking neural networks are highly promising, but remain simplified omitting r...
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...
International audienceNonlinear dendritic integration is thought to increase the computational abili...
The significant role of dendritic processing within neuronal networks has become increasingly clear....
International audienceNonlinear dendritic integration is thought to increase the computational abili...
The significant role of dendritic processing within neuronal networks has become increasingly clear....
Dendrites shape information flow in neurons. Yet, there is little consensus on the level of spatial ...
A reference implementation of → Non-additive coupling enables propagation of synchronous spiking act...
A reference implementation of → Non-additive coupling enables propagation of synchronous spiking act...
This article highlights specific features of biological neurons and their dendritic trees, whose ado...
This article highlights specific features of biological neurons and their dendritic trees, whose ado...
Neuronal morphologies provide the foundation for the electrical behavior of neurons, the connectomes...
There has been a lack of progress in developing spiking neuron models for pattern classification, wh...