A theory for self-sustained balanced states in absence of strong external currents
David Angulo-Garcia, Alessandro Torcini

TL;DR
This paper introduces a novel mechanism using short-term synaptic depression to sustain irregular, balanced neural activity without external input, expanding the understanding of cortical circuit stability.
Contribution
It demonstrates that synaptic depression can dynamically balance neural networks, eliminating the need for strong external stimuli, and provides a theoretical framework for this self-sustained activity.
Findings
Network exhibits fixed point or chaos depending on synaptic strength
Finite networks show multiple routes to chaos
Balance achieved through dynamic cancellation of input correlations
Abstract
Recurrent neural networks with balanced excitation and inhibition exhibit irregular asynchronous dynamics, which is fundamental for cortical computations. Classical balance mechanisms require strong external inputs to sustain finite firing rates, raising concerns about their biological plausibility. Here, we investigate an alternative mechanism based on short-term synaptic depression (STD) acting on excitatory-excitatory synapses, which dynamically balances the network activity without the need of external inputs. By employing numerical simulations and theoretical investigations we characterize the dynamics of a massively coupled network made up of rate-neuron models. Depending on the synaptic strength , the network exhibits two distinct regimes: at sufficiently small , it converges to a homogeneous fixed point, while for sufficiently large , it exhibits Rate Chaos.…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Neural dynamics and brain function · Neural Networks and Reservoir Computing
