Optimal tail estimates in $\beta$-ensembles and applications to last passage percolation
Jnaneshwar Baslingker, Riddhipratim Basu, Sudeshna Bhattacharjee, Manjunath Krishnapur

TL;DR
This paper establishes precise tail estimates with matching constants for the largest eigenvalues in $eta$-ensembles, and applies these results to solve problems in last passage percolation within the KPZ universality class.
Contribution
It provides the first matching constant tail estimates for general $eta$-ensembles and demonstrates their application to resolving conjectures in last passage percolation.
Findings
Matched tail estimates for $eta$-ensembles with constants
Derived three laws of iterated logarithm in LPP
Solved a conjecture of Ledoux in LPP context
Abstract
Hermite and Laguerre -ensembles are important and well studied models in random matrix theory with special cases corresponding to eigenvalues of classical random matrix ensembles. It is well known that the largest eigenvalues in these, under appropriate scaling, converge weakly to the Tracy-Widom distribution whose distribution function has asymptotics given by as and as . Although tail estimates for the largest eigenvalues with correct exponents have been proved for the pre-limiting models, estimates with matching constants had not so far been established for general ; even in the exactly solvable cases, some of the bounds were missing. In this paper, we prove upper and lower…
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Taxonomy
TopicsRandom Matrices and Applications · Stochastic processes and statistical mechanics · Bayesian Methods and Mixture Models
