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Stein kernels for $q$-moment measures and new bounds for the rate of convergence in the central limit theorem (2103.00913v3)

Published 1 Mar 2021 in math.PR and math.AP

Abstract: Given an isotropic probability measure $\mu$ on ${\mathbb R}d$ with ${\rm d}\mu \left( x \right) = {\left( {\varrho \left( x \right)} \right){ - \alpha }}{\rm d}x$, where $\alpha > d + 1$ and $\varrho :{{\mathbb R}d} \to \left( {0, + \infty } \right)$ is a continuous function and uniformly convex (${\nabla 2}\varrho \ge {\varepsilon_0}{\rm {Id}}$). By using Stein kernels for $\left( {\alpha - d} \right)$-moment measures, we prove that the rates of convergence in the central limit theorem with sequence of i.i.d. random variables ${X_1},{X_2},...,{X_n}$ of the law $\mu$, to be of form $c_{{\varepsilon}_0}\,\sqrt {\dfrac{d}{n}} $. The general case (i.e., $\varrho$ is only convex and continuous) remains open.

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