English

A functional limit theorem for the sine-process

Dynamical Systems 2018-01-12 v3 Mathematical Physics math.MP Probability

Abstract

The main result of this paper is a functional limit theorem for the sine-process. In particular, we study the limit distribution, in the space of trajectories, for the number of particles in a growing interval. The sine-process has the Kolmogorov property and satisfies the Central Limit Theorem, but our functional limit theorem is very different from the Donsker Invariance Principle. We show that the time integral of our process can be approximated by the sum of a linear Gaussian process and independent Gaussian fluctuations whose covariance matrix is computed explicitly. We interpret these results in terms of the Gaussian Free Field convergence for the random matrix models. The proof relies on a general form of the multidimensional Central Limit Theorem under the sine-process for linear statistics of two types: those having growing variance and those with bounded variance corresponding to observables of Sobolev regularity 1/21/2.

Keywords

Cite

@article{arxiv.1701.00111,
  title  = {A functional limit theorem for the sine-process},
  author = {Alexander I. Bufetov and Andrey V. Dymov},
  journal= {arXiv preprint arXiv:1701.00111},
  year   = {2018}
}

Comments

55 pages. Interpretation of the results in terms of the Gaussian Free Field is added. Presentation is improved and typos are fixed

R2 v1 2026-06-22T17:38:23.060Z