Metastability in a stochastic neural network modeled as a velocity jump Markov process
Paul C. Bressloff, Jay M. Newby

TL;DR
This paper introduces a velocity jump Markov process model for neural population dynamics, capturing intrinsic noise effects and metastable state transitions, extending the master equation framework with a novel stochastic approach.
Contribution
It develops a velocity jump Markov process model that integrates synaptic and spiking activity, providing a new way to analyze metastability in stochastic neural networks.
Findings
Derived mean first passage time for metastable transitions
Applied WKB approximation and singular perturbation theory
Model captures slow synaptic dynamics and stochastic spiking
Abstract
One of the major challenges in neuroscience is to determine how noise that is present at the molecular and cellular levels affects dynamics and information processing at the macroscopic level of synaptically coupled neuronal populations. Often noise is incorprated into deterministic network models using extrinsic noise sources. An alternative approach is to assume that noise arises intrinsically as a collective population effect, which has led to a master equation formulation of stochastic neural networks. In this paper we extend the master equation formulation by introducing a stochastic model of neural population dynamics in the form of a velocity jump Markov process. The latter has the advantage of keeping track of synaptic processing as well as spiking activity, and reduces to the neural master equation in a particular limit. The population synaptic variables evolve according to…
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