A Maximal Large Deviation Inequality for Sub-Gaussian Variables
Abstract
In this short note we prove a maximal concentration lemma for sub-Gaussian random variables stating that for independent sub-Gaussian random variables we have \[P<(1 i NSi>ε>) <(-1N2Σi=1Nε22σi2>), \] where Si is the sum of i zero mean independent sub-Gaussian random variables and σi is the variance of the ith random variable.
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