Large deviation principles induced by the Stiefel manifold, and random multi-dimensional projections
Steven Soojin Kim, Kavita Ramanan

TL;DR
This paper establishes large deviation principles for high-dimensional random vectors projected onto lower-dimensional subspaces via the Stiefel manifold, extending understanding of multi-dimensional projections in high-dimensional probability.
Contribution
It introduces a general framework for large deviations of multi-dimensional projections, including random projections from the Haar measure, with a variational formula for the rate function.
Findings
Large deviation principles hold for projections of certain high-dimensional distributions.
A variational formula for the rate function of annealed projections is derived.
A large deviation principle for empirical measures of matrix rows is established.
Abstract
Given an -dimensional random vector , for , consider its -dimensional projection , where is an -dimensional matrix belonging to the Stiefel manifold of orthonormal -frames in . For a class of sequences that includes the uniform distributions on scaled balls, , and product measures with sufficiently light tails, it is shown that the sequence of projected vectors satisfies a large deviation principle whenever the empirical measures of the rows of converge, as , to a probability measure on . In particular, when is a random matrix drawn from the Haar measure on , this is shown to imply a large…
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Taxonomy
TopicsMathematical Analysis and Transform Methods · Mathematical Dynamics and Fractals · advanced mathematical theories
