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Quantitative affine approximation for UMD targets (1510.00276v5)

Published 1 Oct 2015 in math.FA and math.MG

Abstract: It is shown here that if $(Y,|\cdot|_Y)$ is a Banach space in which martingale differences are unconditional (a UMD Banach space) then there exists $c=c(Y)\in (0,\infty)$ with the following property. For every $n\in \mathbb{N}$ and $\varepsilon\in (0,1/2]$, if $(X,|\cdot|_X)$ is an $n$-dimensional normed space with unit ball $B_X$ and $f:B_X\to Y$ is a $1$-Lipschitz function then there exists an affine mapping $\Lambda:X\to Y$ and a sub-ball $B*=y+\rho B_X\subseteq B_X$ of radius $\rho\ge \exp(-(1/\varepsilon){cn})$ such that $|f(x)-\Lambda(x)|_Y\le \varepsilon \rho$ for all $x\in B*$. This estimate on the macroscopic scale of affine approximability of vector-valued Lipschitz functions is an asymptotic improvement (as $n\to \infty$) over the best previously known bound even when $X$ is $\mathbb{R}n$ equipped with the Euclidean norm and $Y$ is a Hilbert space.

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