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Improvements on Sawyer type estimates for generalized maximal functions (1904.00835v1)

Published 29 Mar 2019 in math.CA

Abstract: In this paper we prove mixed inequalities for the maximal operator $M_\Phi$, for general Young functions $\Phi$ with certain additional properties, improving and generalizing some previous estimates for the Hardy-Littlewood maximal operator proved by E. Sawyer. We show that given $r\geq 1$, if $u,vr$ are weights belonging to the $A_1$-Muckenhoupt class and $\Phi$ is a Young function as above, then the inequality [uvr\left(\left{x\in \mathbb{R}n: \frac{M_\Phi(fv)(x)}{v(x)}>t\right}\right)\leq C\int_{\mathbb{R}n}\Phi\left(\frac{|f(x)|}{t}\right)u(x)vr(x)\,dx] holds for every positive $t$. A motivation for studying these type of estimates is to find an alternative way to prove the boundedness properties of $M_\Phi$. Moreover, it is well-known that for the particular case $\Phi(t)=t(1+\log+t)m$ with $m\in\mathbb{N}$ these maximal functions control, in some sense, certain operatos in Harmonic Analysis.

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