Although there is an extensive literature on the maxima of Gaussian processes, there are relatively few non-asymptotic bounds on their lower-tail probabilities. The aim of this paper is to develop such a bound, while also allowing for many types of dependence. Let be a centered Gaussian vector with standardized entries, whose correlation matrix satisfies for some constant . Then, for any , we establish an upper bound on the probability in terms of . The bound is also sharp, in the sense that it is attained up to a constant, independent of . Next, we apply this result in the context of high-dimensional statistics, where we simplify and weaken conditions that have recently been used to establish near-parametric rates of bootstrap approximation. Lastly, an interesting aspect of this application is that it makes use of recent refinements of Bourgain and Tzafriri's "restricted invertibility principle".
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