Physical Review Research (Sep 2024)

Linking network- and neuron-level correlations by renormalized field theory

  • Michael Dick,
  • Alexander van Meegen,
  • Moritz Helias

DOI
https://doi.org/10.1103/PhysRevResearch.6.033264
Journal volume & issue
Vol. 6, no. 3
p. 033264

Abstract

Read online Read online

It is frequently hypothesized that cortical networks operate close to a critical point. Advantages of criticality include rich dynamics well suited for computation and critical slowing down, which may offer a mechanism for dynamic memory. However, mean-field approximations, while versatile and popular, inherently neglect the fluctuations responsible for such critical dynamics. Thus, a renormalized theory is necessary. We consider the Sompolinsky-Crisanti-Sommers model which displays a well studied chaotic as well as a magnetic transition. Based on the analog of a quantum effective action, we derive self-consistency equations for the first two renormalized Greens functions. Their self-consistent solution reveals a coupling between the population level activity and single neuron heterogeneity. The quantitative theory explains the population autocorrelation function, the single-unit autocorrelation function with its multiple temporal scales, and cross correlations.