Testing of information condensation in a model reverberating spiking neural network

12/02/2010
by   Alexander K. Vidybida, et al.
0

Information about external world is delivered to the brain in the form of structured in time spike trains. During further processing in higher areas, information is subjected to a certain condensation process, which results in formation of abstract conceptual images of external world, apparently, represented as certain uniform spiking activity partially independent on the input spike trains details. Possible physical mechanism of condensation at the level of individual neuron was discussed recently. In a reverberating spiking neural network, due to this mechanism the dynamics should settle down to the same uniform/periodic activity in response to a set of various inputs. Since the same periodic activity may correspond to different input spike trains, we interpret this as possible candidate for information condensation mechanism in a network. Our purpose is to test this possibility in a network model consisting of five fully connected neurons, particularly, the influence of geometric size of the network, on its ability to condense information. Dynamics of 20 spiking neural networks of different geometric sizes are modelled by means of computer simulation. Each network was propelled into reverberating dynamics by applying various initial input spike trains. We run the dynamics until it becomes periodic. The Shannon's formula is used to calculate the amount of information in any input spike train and in any periodic state found. As a result, we obtain explicit estimate of the degree of information condensation in the networks, and conclude that it depends strongly on the net's geometric size.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/29/2023

Decomposing spiking neural networks with Graphical Neural Activity Threads

A satisfactory understanding of information processing in spiking neural...
research
12/01/2011

Supervised Learning of Logical Operations in Layered Spiking Neural Networks with Spike Train Encoding

Few algorithms for supervised training of spiking neural networks exist ...
research
04/18/2015

Time Resolution Dependence of Information Measures for Spiking Neurons: Atoms, Scaling, and Universality

The mutual information between stimulus and spike-train response is comm...
research
10/07/2018

Pre-Synaptic Pool Modification (PSPM): A Supervised Learning Procedure for Spiking Neural Networks

A central question in neuroscience is how to develop realistic models th...
research
05/09/2023

Spiking Neural Networks in the Alexiewicz Topology: A New Perspective on Analysis and Error Bounds

In order to ease the analysis of error propagation in neuromorphic compu...
research
11/02/2018

Data-driven Perception of Neuron Point Process with Unknown Unknowns

Identification of patterns from discrete data time-series for statistica...
research
10/26/2013

Studying a Chaotic Spiking Neural Model

Dynamics of a chaotic spiking neuron model are being studied mathematica...

Please sign up or login with your details

Forgot password? Click here to reset