Square Functions and Variational Estimates for Ritt Operators on $L^1$
Jennifer Hults, Karin Reinhold-Larsson

TL;DR
This paper extends square function and variational estimate theories for Ritt operators to the endpoint case $p=1$, providing boundedness results and conditions for specific convolution operators on $L^1$.
Contribution
It introduces new boundedness results for generalized square functions and variational norms for Ritt operators at the $L^1$ endpoint, including convolution operators with ergodic transformations.
Findings
Square functions are bounded on $L^1$ for Ritt operators when $ ext{alpha}+1<sm$.
Conditions are given for weak type (1,1) bounds for convolution Ritt operators.
Bounds for variational and oscillation norms are established at the endpoint.
Abstract
Let be a bounded operator. We say is a Ritt operator if . It is know that when is a positive contraction and a Ritt operator in , , then for any integer , the square function \[\Big( \sum_n n^{2m-1} |T^n(I-T)^{m}f|^2 \Big)^{1/2}\] defines a bounded operator \cite{LeMX-Vq} in . In this work, we extend the theory to the endpoint case , showing that if is a Ritt operator on , then the generalized square function \[Q_{\alpha,s,m}f=\Big( \sum_n n^{\alpha} |T^n(I-T)^mf|^s \Big)^{1/s}\] is bounded on for . In the specific setting where is a convolution operator of the form , with a probability measure on and the composition operator induced by an invertible, ergodic measure preserving transformation, we provide…
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