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Title

CENTRAL LIMIT THEOREM FOR RANDOM WALKS IN DIVERGENCE FREE RANDOM DRIFT FIELD -- REVISITED.

Authors

TÓTH, BÁLINT

Abstract

In Kozma-Toth (2017), the weak CLT was established for random walks in doubly stochastic (or, divergence-free) random environments, under the following conditions: • Strict ellipticity assumed for the symmetric part of the drift field. • H-1 assumed for the antisymmetric part of the drift field. The proof relied on a martingale approximation (a la Kipnis-Varadhan) adapted to the non-self-adjoint and non-sectorial nature of the problem. The two substantial technical components of the proof were: • Á functional analytic statement about the unbounded operator formally written as |L L* |-1/2(L -- L*)|L L* |-1/2, where L is the infinitesimal generator of the environment process, as seen from the position of the moving random walker. • Á diagonal heat kernel upper bound which follows directly from Nash's inequality, or, alternatively, from the "evolving sets" arguments of Morris-Peres (2005), valid only under the assumed strict ellipticity. In this note, we present a partly alternative proof of the same result which relies only on functional analytic arguments and not on the diagonal heat kernel upper bound provided by Nash's inequality. This alternative proof is relevant since it can be naturally extended to non-elliptic settings pushed to the optimum, which will be presented in a forthcoming paper. The goal of this note is to present the argument in its simplest and most transparent form.

Subjects

CENTRAL limit theorem; INCOMPRESSIBLE flow; RANDOM fields; MARTINGALES (Mathematics); RANDOM walks; ARGUMENT

Publication

Romanian Journal of Pure & Applied Mathematics / Revue Roumaine de Mathematiques Pures et Appliquees, 2024, Vol 69, Issue 3/4, p585

ISSN

0035-3965

Publication type

Academic Journal

DOI

10.59277/RRMPA.2024.585.601

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