Moving Averages
Abstract
We consider the convergence of moving averages in the general setting of ergodic theory or stationary ergodic processes. We characterize when there is universal convergence of moving averages based on complete convergence to zero of the standard ergodic averages. Using a theorem of Hsu-Robbins (1947) for independent, identically distributed processes, we prove for any bounded measurable function on a standard probability space , there exists a Bernoulli shift , such that all moving averages with converge a.e. to . We refresh the reader about the cone condition established by Bellow, Jones, Rosenblatt (1990) which guarantees convergence of certain moving averages for all and ergodic measure preserving maps . We show given and ergodic measure preserving , there exists a moving average with strictly increasing such that does not satisfy the cone condition, but pointwise convergence holds a.e. We show for any non-zero , there is a generic class of ergodic maps such that each map has an associated moving average which does not converge pointwise. It is known if is mean-zero, then there exist solutions and to the coboundary equation: . This implies and produce universal moving averages. We show this does not generalize to for by explicitly defining functions such that for each ergodic measure preserving , there exists a moving average with such that these moving averages do not converge pointwise. Several of the results are generalized to the case of moving averages with polynomial growth.
Keywords
Cite
@article{arxiv.2302.03400,
title = {Moving Averages},
author = {Terrence Adams and Joseph Rosenblatt},
journal= {arXiv preprint arXiv:2302.03400},
year = {2023}
}
Comments
30 pages