Title
How pattern formation in ring networks of excitatory and inhibitory spiking neurons depends on the input current regime.
Abstract
Pattern formation, i.e., the generation of an inhomogeneous spatial activity distribution in a dynamical system with translation invariant structure, is a well-studied phenomenon in neuronal network dynamics, specifically in neural field models. These are population models to describe the spatio-temporal dynamics of large groups of neurons in terms of macroscopic variables such as population firing rates. Though neural field models are often deduced from and equipped with biophysically meaningful properties, a direct mapping to simulations of individual spiking neuron populations is rarely considered. Neurons have a distinct identity defined by their action on their postsynaptic targets. In its simplest form they act either excitatorily or inhibitorily. When the distribution of neuron identities is assumed to be periodic, pattern formation can be observed, given the coupling strength is supracritical, i.e., larger than a critical weight. We find that this critical weight is strongly dependent on the characteristics of the neuronal input, i.e., depends on whether neurons are mean- or fluctuation driven, and different limits in linearizing the full non-linear system apply in order to assess stability. In particular, if neurons are mean-driven, the linearization has a very simple form and becomes independent of both the fixed point firing rate and the variance of the input current, while in the very strongly fluctuation-driven regime the fixed point rate, as well as the input mean and variance are important parameters in the determination of the critical weight. We demonstrate that interestingly even in "intermediate" regimes, when the system is technically fluctuation-driven, the simple linearization neglecting the variance of the input can yield the better prediction of the critical coupling strength. We moreover analyze the effects of structural randomness by rewiring individual synapses or redistributing weights, as well as coarse-graining on the formation of inhomogeneous activity patterns.
Year
DOI
Venue
2014
10.3389/fncom.2013.00187
Front. Comput. Neurosci.
Keywords
Field
DocType
linear model,pattern formation,fluctuation driven,mean-driven,ring networks,small-world networks,spiking neurons,small world networks,bioinformatics,neuroscience,computational,biomedical research
Population,Neuroscience,Small-world network,Pattern formation,Artificial intelligence,Fixed point,Biological neural network,Machine learning,Mathematics,Dynamical system,Linearization,Randomness
Journal
Volume
Issue
ISSN
7
S1
1662-5188
Citations 
PageRank 
References 
2
0.39
15
Authors
5
Name
Order
Citations
PageRank
B Kriener1745.41
Moritz Helias222917.06
Stefan Rotter344744.03
Markus Diesmann41692129.76
Gaute T. Einevoll520926.15