The large deviation approach to statistical mechanics
Hugo Touchette

TL;DR
This paper reviews how large deviation theory provides a mathematical framework for understanding fluctuations in statistical mechanics, connecting probability decay rates with physical phenomena across various systems.
Contribution
It demonstrates that the language of statistical mechanics can be fully expressed through large deviation theory, unifying diverse physical systems under a common mathematical approach.
Findings
Large deviation principles characterize fluctuations in many physical systems.
Variational principles for equilibrium and nonequilibrium states are derived from large deviations.
Nonconcave entropies and fluctuation relations are explained via large deviation concepts.
Abstract
The theory of large deviations is concerned with the exponential decay of probabilities of large fluctuations in random systems. These probabilities are important in many fields of study, including statistics, finance, and engineering, as they often yield valuable information about the large fluctuations of a random system around its most probable state or trajectory. In the context of equilibrium statistical mechanics, the theory of large deviations provides exponential-order estimates of probabilities that refine and generalize Einstein's theory of fluctuations. This review explores this and other connections between large deviation theory and statistical mechanics, in an effort to show that the mathematical language of statistical mechanics is the language of large deviation theory. The first part of the review presents the basics of large deviation theory, and works out many of its…
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