When learning a complex task our nervous system self-organizes large groups of neurons into coherent dynamic activity patterns. During this, a network with multiple, simultaneously active, and computationally powerful cell assemblies is created. How such ordered structures are formed while preserving a rich diversity of neural dynamics needed for computation is still unknown. Here we show that the combination of synaptic plasticity with the slower process of synaptic scaling achieves (i) the formation of cell assemblies and (ii) enhances the diversity of neural dynamics facilitating the learning of complex calculations. Due to synaptic scaling the dynamics of different cell assemblies do not interfere with each other. As a consequenc...
This selective review explores biologically inspired learning as a model for intelligent robot contr...
A major challenge in neuroscience is to reverse engineer the brain and understand its information pr...
Cell assemblies (CAs) were posited by Hebb almost 60 years ago as the unit of representation in the ...
[[abstract]]Donald O. Hebb's neurophysiological cell-assembly postulate provides the first descripti...
We are exploring the significance of biological complexity for neuronal computation. Here we demonst...
Neural systems show a wide variety of complex dynamics on different time scales. Specifically, on th...
(A) Spontaneous activity in the neural network without Hebbian learning. (B) Matrix of uniformly sam...
A widely discussed hypothesis in neuroscience is that transiently active ensembles of neurons, known...
We investigate the formation of a Hebbian cell assembly of spiking neurons, using a temporal synapti...
We investigate the behavior of a Hebbian cell assembly of spiking neurons formed via a temporal syna...
Conventional synaptic plasticity in combination with synaptic scaling is a biologically plausible pl...
Are single neocortical neurons as powerful as multi-layered networks? A recent compartmental modeli...
Are single neocortical neurons as powerful as multi-layered networks? A recent compartmental modelin...
Conventional synaptic plasticity in combination with synaptic scaling is a biologically plausible pl...
It has been conjectured that nonlinear processing in dendritic branches endows individual neurons wi...
This selective review explores biologically inspired learning as a model for intelligent robot contr...
A major challenge in neuroscience is to reverse engineer the brain and understand its information pr...
Cell assemblies (CAs) were posited by Hebb almost 60 years ago as the unit of representation in the ...
[[abstract]]Donald O. Hebb's neurophysiological cell-assembly postulate provides the first descripti...
We are exploring the significance of biological complexity for neuronal computation. Here we demonst...
Neural systems show a wide variety of complex dynamics on different time scales. Specifically, on th...
(A) Spontaneous activity in the neural network without Hebbian learning. (B) Matrix of uniformly sam...
A widely discussed hypothesis in neuroscience is that transiently active ensembles of neurons, known...
We investigate the formation of a Hebbian cell assembly of spiking neurons, using a temporal synapti...
We investigate the behavior of a Hebbian cell assembly of spiking neurons formed via a temporal syna...
Conventional synaptic plasticity in combination with synaptic scaling is a biologically plausible pl...
Are single neocortical neurons as powerful as multi-layered networks? A recent compartmental modeli...
Are single neocortical neurons as powerful as multi-layered networks? A recent compartmental modelin...
Conventional synaptic plasticity in combination with synaptic scaling is a biologically plausible pl...
It has been conjectured that nonlinear processing in dendritic branches endows individual neurons wi...
This selective review explores biologically inspired learning as a model for intelligent robot contr...
A major challenge in neuroscience is to reverse engineer the brain and understand its information pr...
Cell assemblies (CAs) were posited by Hebb almost 60 years ago as the unit of representation in the ...