Entropic trade-off relations in stochastic thermodynamics via replica Markov processes
Yoshihiko Hasegawa

TL;DR
This paper introduces replica Markov processes to derive bounds on nonlinear entropic measures in stochastic thermodynamics, extending traditional linear-based trade-off relations to encompass complex information-theoretic quantities.
Contribution
The paper presents a novel framework using replica Markov processes to establish bounds on nonlinear entropies, bridging a gap in stochastic thermodynamics analysis.
Findings
Derived upper bounds on Tsallis and Rènyi entropies for trajectory distributions.
Extended bounds to quantum systems with monitored dynamics.
Provided a general method for constraining nonlinear information measures.
Abstract
Traditional thermodynamic trade-off relations usually apply to quantities that depend linearly on probability distributions. In contrast, many important information-theoretic measures, such as entropies, are nonlinear and therefore difficult to analyze with existing frameworks. Motivated by replica methods in quantum information and spin-glass theory, we introduce replica Markov processes, i.e., Markovian dynamics of independent, identical copies, and derive trade-off relations that bound relative moments of replica observables in terms of the dynamical activity. By choosing appropriate replica observables, these inequalities translate into bounds on nonlinear quantities of the original single process. Focusing on entropic measures of uncertainty, we obtain upper bounds on both the time derivative and the value of the Tsallis entropy for general trajectory-observable distributions.…
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Taxonomy
TopicsAdvanced Thermodynamics and Statistical Mechanics · Statistical Mechanics and Entropy · Neural dynamics and brain function
