A concentration theorem for projections
Abstract
X in RD has mean zero and finite second moments. We show that there is a precise sense in which almost all linear projections of X into Rd (for d < D) look like a scale-mixture of spherical Gaussians -- specifically, a mixture of distributions N(0, sigma2 Id) where the weight of the particular sigma component is P (| X |2 = sigma2 D). The extent of this effect depends upon the ratio of d to D, and upon a particular coefficient of eccentricity of X's distribution. We explore this result in a variety of experiments.
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