Optimal Fluctuations for Discrete-time Markov Jump Processes
Abstract
In the last few decades, noise-induced large fluctuations and transition phenomena have garnered significant attention in a variety of scientific contexts. The concept of prehistory probability has been proposed within the framework of Langevin dynamics to illustrate the focusing effect of large fluctuation paths onto a deterministic trajectory known as the optimal path. The present paper is devoted to showing that such a focusing effect persists within the framework of discrete-time Markov jump processes. Our proof leverages large deviation theory and the concept of time reversal for Markov jump processes. A key finding is the relationship identified between the optimal path and the time reversal of a specific family of probability distributions. This theoretical framework elucidates how an essentially deterministic mechanism can emerge from rare stochastic events in discrete-time Markov jump systems.
Cite
@article{arxiv.2603.06815,
title = {Optimal Fluctuations for Discrete-time Markov Jump Processes},
author = {Feng Zhao and Jinjie Zhu and Yang Li and Xianbin Liu and Dongping Jin},
journal= {arXiv preprint arXiv:2603.06815},
year = {2026}
}
Comments
49 pages, 36 figures