<div><p>Abstract</p><p>Directed random graph models frequently are used successfully in modeling the population dynamics of networks of cortical neurons connected by chemical synapses. Experimental results consistently reveal that neuronal network topology is complex, however, in the sense that it differs statistically from a random network, and differs for classes of neurons that are physiologically different. This suggests that complex network models whose subnetworks have distinct topological structure may be a useful, and more biologically realistic, alternative to random networks. Here we demonstrate that the balanced excitation and inhibition frequently observed in small cortical regions can transiently disappear in otherwise standard...
Traditional analysis of cortical network dynamics has most commonly treated simple random graph stru...
Cortical neuron spiking activity is broadly classified as temporally irregular and asynchronous. Mod...
Networks of model neurons with balanced recurrent excitation and inhibition capture the irregular an...
Directed random graph models frequently are used successfully in modeling the population dynamics of...
Published April 17, 2014Directed random graph models frequently are used successfully in modeling th...
Balanced networks of inhibitory and excitatory neurons with homogeneously random recurrent connectiv...
The way in which cortical microcircuit components -- most importantly neurons -- and their connectiv...
<p>The connectivity of cortical neuronal networks is complex, exhibiting clustered network motifs an...
The connectivity of cortical neuronal networks is complex, exhibiting clustered network motifs and e...
A signature feature of cortical spike trains is their trial-to-trial variability. This variability i...
A signature feature of cortical spike trains is their trial-to-trial variability. This variability i...
Cortical networks are thought to operate in a state of tightly balanced excitation and inhibition....
Connectivity in local cortical networks is far from random: Not only are reciprocal connections over...
Connectivity in local cortical networks is far from random: Reciprocal connections are over-represen...
Cortical neuron spiking activity is broadly classified as temporally irregular and asynchronous. Mod...
Traditional analysis of cortical network dynamics has most commonly treated simple random graph stru...
Cortical neuron spiking activity is broadly classified as temporally irregular and asynchronous. Mod...
Networks of model neurons with balanced recurrent excitation and inhibition capture the irregular an...
Directed random graph models frequently are used successfully in modeling the population dynamics of...
Published April 17, 2014Directed random graph models frequently are used successfully in modeling th...
Balanced networks of inhibitory and excitatory neurons with homogeneously random recurrent connectiv...
The way in which cortical microcircuit components -- most importantly neurons -- and their connectiv...
<p>The connectivity of cortical neuronal networks is complex, exhibiting clustered network motifs an...
The connectivity of cortical neuronal networks is complex, exhibiting clustered network motifs and e...
A signature feature of cortical spike trains is their trial-to-trial variability. This variability i...
A signature feature of cortical spike trains is their trial-to-trial variability. This variability i...
Cortical networks are thought to operate in a state of tightly balanced excitation and inhibition....
Connectivity in local cortical networks is far from random: Not only are reciprocal connections over...
Connectivity in local cortical networks is far from random: Reciprocal connections are over-represen...
Cortical neuron spiking activity is broadly classified as temporally irregular and asynchronous. Mod...
Traditional analysis of cortical network dynamics has most commonly treated simple random graph stru...
Cortical neuron spiking activity is broadly classified as temporally irregular and asynchronous. Mod...
Networks of model neurons with balanced recurrent excitation and inhibition capture the irregular an...