Categories
Nevin Manimala Statistics

Inferring Entropy Production in Many-Body Systems Using Nonequilibrium Maximum Entropy

Phys Rev Lett. 2026 Feb 20;136(7):077101. doi: 10.1103/xgkj-dxzh.

ABSTRACT

We propose a method for inferring entropy production (EP) in high-dimensional stochastic systems, including many-body systems and non-Markovian systems with long memory. Standard techniques for estimating EP become intractable in such systems due to computational and statistical limitations. We infer trajectory-level EP and lower bounds on average EP by exploiting a nonequilibrium analogue of the maximum entropy principle, along with convex duality. Our approach uses only samples of trajectory observables, such as spatiotemporal correlations. It does not require reconstruction of high-dimensional probability distributions or rate matrices, nor impose any special assumptions such as discrete states or multipartite dynamics. In addition, it may be used to compute a hierarchical decomposition of EP, reflecting contributions from different interaction orders, and it has an intuitive physical interpretation as a “thermodynamic uncertainty relation.” We demonstrate its numerical performance on a disordered nonequilibrium spin model with 1000 spins and a large neural spike-train dataset.

PMID:41791056 | DOI:10.1103/xgkj-dxzh

By Nevin Manimala

Portfolio Website for Nevin Manimala