The geometry of spontaneous spiking in neuronal networks
Georgi S. Medvedev, Svitlana Zhuravytska

TL;DR
This paper develops a mathematical framework to analyze spontaneous spiking activity in electrically coupled neuronal networks, revealing how network topology, coupling strength, and excitability influence activity patterns and synchronization.
Contribution
It introduces a variational approach using large deviation theory and graph analysis to characterize network dynamics and transitions between activity regimes.
Findings
Identifies the most likely activity patterns via minima of a specific function.
Provides asymptotic formulas for activity rate based on coupling strength.
Analyzes stability of synchronous states considering network connectivity.
Abstract
The mathematical theory of pattern formation in electrically coupled networks of excitable neurons forced by small noise is presented in this work. Using the Freidlin-Wentzell large deviation theory for randomly perturbed dynamical systems and the elements of the algebraic graph theory, we identify and analyze the main regimes in the network dynamics in terms of the key control parameters: excitability, coupling strength, and network topology. The analysis reveals the geometry of spontaneous dynamics in electrically coupled network. Specifically, we show that the location of the minima of a certain continuous function on the surface of the unit n-cube encodes the most likely activity patterns generated by the network. By studying how the minima of this function evolve under the variation of the coupling strength, we describe the principal transformations in the network dynamics. The…
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