<p><b>(A)</b> Alternate network schematic with hypercolumns (large black circles), along with their member minicolumns (smaller colored circles) and local basket cell populations (centered gray circles). Minicolumns with the same color across different hypercolumns belong to the same pattern; these color indicators are used in the following subfigures. <b>(B)</b> Rastergram (10x downsampled, henceforth) and superimposed firing rates (10 ms bins averaged per pattern, henceforth) associated with the first training epoch. <b>(C)</b> Progression of the ‘print-now’ <i>κ</i> signal whose brief activations are synchronized with the incoming stimuli from (B). <b>(D)</b> Development of during training and averaged over 50 randomly selected neurons ...
<p>(a): Schematic hunting scene, illustrating the need for complicated dynamical systems learning an...
<p>The single network is fully connected. The excitatory neurons are divided into N selective pools ...
We analyse the behaviour of an attractor neural network which exhibits low mean temporal activity le...
<p><b>(A)</b> Rastergram and firing rates associated with the first out of 50 epochs of training. <b...
<p>Neural activities plotted as a time series of the overlaps with the target (), the input (), and ...
<p><a href="http://www.plosone.org/article/info:doi/10.1371/journal.pone.0002577#pone-0002577-g001" ...
<p>The network cohesion and inhibition levels are and , respectively. (<b>A</b>) Firing activity fo...
<p>The network is comprised of N = 70×70 = 4900 neurons, each connected to <i>C</i> = 0.05<i>N</i> o...
A Excitatory (E) neurons (red circles) are distributed on a ring with coordinates in [−π, π]. Excita...
Attractor models are simplified models used to describe the dynamics of firing rate profiles of a po...
<p>(A) Network structure. (B) When presented with stimulus, recurrent connections between simultaneo...
Neuromorphic chips embody computational principles operating in the nervous system, into microelectr...
The notion of attractor networks is the leading hypothesis for how associative memories are stored a...
The work of this thesis concerns how cortical memories are stored and retrieved. In particular, larg...
<div><p>Recent experimental measurements have demonstrated that spontaneous neural activity in the a...
<p>(a): Schematic hunting scene, illustrating the need for complicated dynamical systems learning an...
<p>The single network is fully connected. The excitatory neurons are divided into N selective pools ...
We analyse the behaviour of an attractor neural network which exhibits low mean temporal activity le...
<p><b>(A)</b> Rastergram and firing rates associated with the first out of 50 epochs of training. <b...
<p>Neural activities plotted as a time series of the overlaps with the target (), the input (), and ...
<p><a href="http://www.plosone.org/article/info:doi/10.1371/journal.pone.0002577#pone-0002577-g001" ...
<p>The network cohesion and inhibition levels are and , respectively. (<b>A</b>) Firing activity fo...
<p>The network is comprised of N = 70×70 = 4900 neurons, each connected to <i>C</i> = 0.05<i>N</i> o...
A Excitatory (E) neurons (red circles) are distributed on a ring with coordinates in [−π, π]. Excita...
Attractor models are simplified models used to describe the dynamics of firing rate profiles of a po...
<p>(A) Network structure. (B) When presented with stimulus, recurrent connections between simultaneo...
Neuromorphic chips embody computational principles operating in the nervous system, into microelectr...
The notion of attractor networks is the leading hypothesis for how associative memories are stored a...
The work of this thesis concerns how cortical memories are stored and retrieved. In particular, larg...
<div><p>Recent experimental measurements have demonstrated that spontaneous neural activity in the a...
<p>(a): Schematic hunting scene, illustrating the need for complicated dynamical systems learning an...
<p>The single network is fully connected. The excitatory neurons are divided into N selective pools ...
We analyse the behaviour of an attractor neural network which exhibits low mean temporal activity le...