Autonomous learning of nonlocal stochastic neuron dynamics

11/22/2020
by   Tyler E. Maltba, et al.
0

Neuronal dynamics is driven by externally imposed or internally generated random excitations/noise, and is often described by systems of stochastic ordinary differential equations. A solution to these equations is the joint probability density function (PDF) of neuron states. It can be used to calculate such information-theoretic quantities as the mutual information between the stochastic stimulus and various internal states of the neuron (e.g., membrane potential), as well as various spiking statistics. When random excitations are modeled as Gaussian white noise, the joint PDF of neuron states satisfies exactly a Fokker-Planck equation. However, most biologically plausible noise sources are correlated (colored). In this case, the resulting PDF equations require a closure approximation. We propose two methods for closing such equations: a modified nonlocal large-eddy-diffusivity closure and a data-driven closure relying on sparse regression to learn relevant features. The closures are tested for stochastic leaky integrate-and-fire (LIF) and FitzHugh-Nagumo (FHN) neurons driven by sine-Wiener noise. Mutual information and total correlation between the random stimulus and the internal states of the neuron are calculated for the FHN neuron.

READ FULL TEXT
research
08/16/2017

Stochastic IMT (insulator-metal-transition) neurons: An interplay of thermal and threshold noise at bifurcation

A stochastic neuron, a key hardware kernel for implementing stochastic n...
research
04/03/2020

Data-driven Solution of Stochastic Differential Equations Using Maximum Entropy Basis Functions

In this paper we present a data-driven approach for uncertainty propagat...
research
03/23/2018

From Random Differential Equations to Structural Causal Models: the stochastic case

Random Differential Equations provide a natural extension of Ordinary Di...
research
11/07/2015

Information Extraction Under Privacy Constraints

A privacy-constrained information extraction problem is considered where...
research
07/27/2022

Learning the Evolution of Correlated Stochastic Power System Dynamics

A machine learning technique is proposed for quantifying uncertainty in ...
research
01/30/2020

Data-Driven Discovery of Coarse-Grained Equations

A general method for learning probability density function (PDF) equatio...
research
10/29/2018

Reduced models of point vortex systems

Nonequilibrium statistical models of point vortex systems are constructe...

Please sign up or login with your details

Forgot password? Click here to reset