Which exceptional low-dimensional projections of a Gaussian point cloud can be found in polynomial time?
Andrea Montanari, Kangjie Zhou

TL;DR
This paper investigates the set of feasible low-dimensional projections of high-dimensional Gaussian data, characterizes which can be found efficiently via algorithms, and connects these findings to advanced statistical physics formulas.
Contribution
It introduces a rigorous characterization of algorithmically feasible projections using stochastic control and variational principles, extending Parisi's formula.
Findings
Characterizes the subset of feasible distributions via stochastic optimal control.
Provides a dual variational principle extending Parisi's formula.
Derives computationally achievable values for certain random optimization problems.
Abstract
Given -dimensional standard Gaussian vectors , we consider the set of all empirical distributions of its -dimensional projections, for a fixed constant. Diaconis and Freedman (1984) proved that, if , all such distributions converge to the standard Gaussian distribution. In contrast, we study the proportional asymptotics, whereby with . In this case, the projection of the data points along a typical random subspace is again Gaussian, but the set of all probability distributions that are asymptotically feasible as -dimensional projections contains non-Gaussian distributions corresponding to exceptional subspaces. Non-rigorous methods from statistical physics yield an indirect characterization of in terms of a generalized…
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Taxonomy
TopicsGeophysics and Gravity Measurements · Optical Polarization and Ellipsometry · Morphological variations and asymmetry
MethodsSparse Evolutionary Training
