Quantitative bounds on vortex fluctuations in $2d$ Coulomb gas and maximum of the integer-valued Gaussian free field
Christophe Garban, Avelio Sep\'ulveda

TL;DR
This paper provides quantitative bounds on vortex fluctuations in 2D Coulomb gas and related models, revealing their scale and impact on the maximum of the integer-valued Gaussian free field, with implications for understanding phase behavior.
Contribution
It introduces non-perturbative bounds on vortex fluctuations and connects these to the maximum of the integer-valued GFF, offering new insights and efficient sampling methods.
Findings
Vortex fluctuations in the Villain model are at least as large as spin-wave fluctuations.
Derived a quantitative upper bound on two-point correlations in the Villain model.
Established a lower bound on Coulomb gas fluctuations consistent with RG predictions.
Abstract
In this paper, we study the influence of the vortices on the fluctuations of systems such as the Coulomb gas, the Villain model or the integer-valued Gaussian free field. In the case of the Villain model, we prove that the fluctuations induced by the vortices are at least of the same order of magnitude as the ones produced by the spin-wave. We obtain the following quantitative upper-bound on the two-point correlation in when \[ \langle\sigma_x \sigma_y\rangle_{\beta}^{Villain} \leq C \, \left( \frac 1 {\|x-y\|_2}\right)^{\frac 1 {2\pi \beta}\left ( 1+\beta e^{-\frac{(2\pi)^2}{2} \beta}\right )} \] The proof is entirely non-perturbative. Furthermore it provides a new and algorithmically efficient way of sampling the Coulomb gas. For the Coulomb gas, we obtain the following lower bound on its fluctuations at high inverse temperature \[…
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Taxonomy
TopicsTheoretical and Computational Physics · Stochastic processes and statistical mechanics · Complex Systems and Time Series Analysis
