Self-sustained activity, bursts, and variability in recurrent networks
Marc-Oliver Gewaltig

TL;DR
This paper demonstrates that sparse networks of integrate-and-fire neurons can maintain stable, self-sustained asynchronous irregular activity without external input, challenging previous assumptions about network size and external stimuli requirements.
Contribution
The study extends Griffith's work by showing that small, sparse networks can sustain activity autonomously, emphasizing the role of strong synapses and irregular firing patterns.
Findings
Self-sustained activity can last for minutes without external input.
Stable states emerge with a small fraction of strong synapses.
Neurons exhibit irregular firing and switch between firing rate states.
Abstract
There is consensus in the current literature that stable states of asynchronous irregular spiking activity require (i) large networks of 10 000 or more neurons and (ii) external background activity or pacemaker neurons. Yet already in 1963, Griffith showed that networks of simple threshold elements can be persistently active at intermediate rates. Here, we extend Griffith's work and demonstrate that sparse networks of integrate-and-fire neurons assume stable states of self-sustained asynchronous and irregular firing without external input or pacemaker neurons. These states can be robustly induced by a brief pulse to a small fraction of the neurons, or by short a period of irregular input, and last for several minutes. Self-sustained activity states emerge when a small fraction of the synapses is strong enough to significantly influence the firing probability of a neuron, consistent with…
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Taxonomy
TopicsNeural dynamics and brain function · Advanced Memory and Neural Computing · Neuroscience and Neural Engineering
