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  4. THE PHASE TRANSITION FOR PLANAR GAUSSIAN PERCOLATION MODELS WITHOUT FKG
 
research article

THE PHASE TRANSITION FOR PLANAR GAUSSIAN PERCOLATION MODELS WITHOUT FKG

Muirhead, Stephen
•
Rivera, Alejandro  
•
Vanneuville, Hugo
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September 1, 2023
Annals Of Probability

We develop techniques to study the phase transition for planar Gaussian percolation models that are not (necessarily) positively correlated. These models lack the property of positive associations (also known as the 'FKG inequality'), and hence many classical arguments in percolation theory do not apply. More precisely, we consider a smooth stationary centred planar Gaussian field f and, given a level l epsilon R, we study the connectivity properties of the excursion set {f >= -l}. We prove the existence of a phase transition at the critical level l(crit) = 0 under only symmetry and (very mild) correlation decay assumptions, which are satisfied by the random plane wave for instance. As a consequence, all nonzero level lines are bounded almost surely, although our result does not settle the boundedness of zero level lines ('no percolation at criticality').To show our main result: (i) we prove a general sharp threshold criterion, inspired by works of Chatterjee, that states that 'sharp thresholds are equivalent to the delocalisation of the threshold location'; (ii) we prove threshold delocalisation for crossing events at large scales-at this step we obtain a sharp threshold result but without being able to locate the threshold-and (iii) to identify the threshold, we adapt Tassion's RSW theory replacing the FKG inequality by a sprinkling procedure. Although some arguments are specific to the Gaussian setting, many steps are very general and we hope that our techniques may be adapted to analyse other models without FKG.

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Type
research article
DOI
10.1214/23-AOP1633
Web of Science ID

WOS:001079177400004

Author(s)
Muirhead, Stephen
Rivera, Alejandro  
Vanneuville, Hugo
Kohler-Schindler, Laurin
Date Issued

2023-09-01

Publisher

Inst Mathematical Statistics-Ims

Published in
Annals Of Probability
Volume

51

Issue

5

Start page

1785

End page

1829

Subjects

Physical Sciences

•

Percolation

•

Gaussian Fields

•

Phase Transition

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
RGM  
FunderGrant Number

Australian Research Council (ARC) Discovery Early Career Researcher Award

DE200101467

SNF

175505

European Research Council (ERC) under the European Union

851565

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Available on Infoscience
February 14, 2024
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/203719
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