Autocorrelation functions and ergodicity in diffusion with stochastic resetting
Viktor Stojkoski, Trifce Sandev, Ljupco Kocarev, Arnab Pal

TL;DR
This paper introduces a trajectory-based method to compute autocorrelation functions in diffusion with stochastic resetting, revealing how resetting affects ergodicity of different observables in physics and economics.
Contribution
It presents a novel stochastic solution approach for autocorrelation functions, enabling analysis of ergodic properties in resetting diffusion models without relying on complex probability densities.
Findings
Diffusion and drift-diffusion are ergodic at the mean level with resetting.
Resetting causes ergodicity breaking in TAMSD.
The approach is validated through analytical and numerical methods.
Abstract
Diffusion with stochastic resetting is a paradigm of resetting processes. Standard renewal or master equation approach are typically used to study steady state and other transport properties such as average, mean squared displacement etc. What remains less explored is the two time point correlation functions whose evaluation is often daunting since it requires the implementation of the exact time dependent probability density functions of the resetting processes which are unknown for most of the problems. We adopt a different approach that allows us to write a stochastic solution in the level of a single trajectory undergoing resetting. Moments and the autocorrelation functions between any two times along the trajectory can then be computed directly using the laws of total expectation. Estimation of autocorrelation functions turns out to be pivotal for investigating the ergodic…
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