Sharp moment and upper tail asymptotics for the critical $2d$ Stochastic Heat Flow
Shirshendu Ganguly, Kyeongsik Nam

TL;DR
This paper establishes sharp bounds on the moments and upper tail behavior of the critical 2D Stochastic Heat Flow, revealing its intermittent nature and connecting it to Gaussian Free Field structures.
Contribution
It proves a matching lower bound for the moments of the critical 2D SHF, confirming long-standing predictions, and introduces a novel connection to Gaussian Free Field theory.
Findings
Confirmed the exponential growth rate of moments as predicted.
Derived sharp bounds on the upper tail of the SHF.
Established a new connection between SHF and Gaussian Free Field.
Abstract
While dimensional growth models in the Kardar-Parisi-Zhang universality class have witnessed an explosion of activity, higher dimensional models remain much less explored. The special case of dimensions is particularly interesting as it is, in physics parlance, neither ultraviolet nor infrared super-renormalizable. Canonical examples include the stochastic heat equation (SHE) with multiplicative noise and directed polymers. The models exhibit a weak to strong disorder transition as the inverse temperature, up to a logarithmic (in the system size) scaling, crosses a critical value. While the sub-critical picture has been established in detail, very recently [CSZ '23] constructed a scaling limit of the critical dimensional directed polymer partition function, termed as the critical Stochastic Heat Flow (SHF), a random measure on The SHF is expected…
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