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Self-consistent formulations for stochastic nonlinear neuronal dynamics

Authors :
Stapmanns, Jonas
Kühn, Tobias
Dahmen, David
Luu, Thomas
Honerkamp, Carsten
Helias, Moritz
Source :
Phys. Rev. E 101, 042124 (2020)
Publication Year :
2018

Abstract

Neural dynamics is often investigated with tools from bifurcation theory. However, many neuron models are stochastic, mimicking fluctuations in the input from unknown parts of the brain or the spiking nature of signals. Noise changes the dynamics with respect to the deterministic model; in particular bifurcation theory cannot be applied. We formulate stochastic neuronal dynamics in the Martin-Siggia-Rose de Dominicis-Janssen (MSRDJ) formalism and present the fluctuation expansion of the effective action and the functional renormalization group (fRG) as two systematic ways to incorporate corrections to the mean dynamics and time-dependent statistics due to fluctuations in the presence of nonlinear neuronal gain. To formulate self-consistency equations, we derive a fundamental link between the effective action in the Onsager-Machlup(OM) formalism, which allows the study of phase transitions, and the MSRDJ effective action, which is computationally advantageous. These results in particular allow the derivation of an OM effective action for systems with non-Gaussian noise. This approach naturally leads to effective deterministic equations for the first moment of the stochastic system; they explain how nonlinearities and noise cooperate to produce memory effects. Moreover, the MSRDJ formulation yields an effective linear system that has identical power spectra and linear response. Starting from the better known loopwise approximation, we then discuss the use of the fRG as a method to obtain self-consistency beyond the mean. We present a new efficient truncation scheme for the hierarchy of flow equations for the vertex functions by adapting the Blaizot, M\'endez and Wschebor approximation from the derivative expansion to the vertex expansion. The methods are presented by means of the simplest possible example of a stochastic differential equation that has generic features of neuronal dynamics.<br />Comment: Equivalent to published version, including two minor typo fixes in Eq (6) and Fig 6. All conclusions unchanged. 7 figures

Details

Database :
arXiv
Journal :
Phys. Rev. E 101, 042124 (2020)
Publication Type :
Report
Accession number :
edsarx.1812.09345
Document Type :
Working Paper
Full Text :
https://doi.org/10.1103/PhysRevE.101.042124