Beyond Parallel Pancakes: Quasi-Polynomial Time Guarantees for Non-Spherical Gaussian Mixtures
Rares-Darius Buhai, David Steurer

TL;DR
This paper presents a quasi-polynomial time algorithm for distinguishing and clustering well-separated Gaussian mixture components with unknown means and covariances, overcoming previous hardness results under certain conditions.
Contribution
The authors develop a sum-of-squares based algorithm that can reliably distinguish Gaussian mixtures from pure Gaussians and cluster components, with guarantees under polynomially bounded mixing weights.
Findings
Algorithm distinguishes mixtures from pure Gaussians.
Provides bipartition certificates separating mixture components.
Achieves approximate clustering for colinear means.
Abstract
We consider mixtures of Gaussian components with unknown means and unknown covariance (identical for all components) that are well-separated, i.e., distinct components have statistical overlap at most for a large enough constant . Previous statistical-query [DKS17] and lattice-based [BRST21, GVV22] lower bounds give formal evidence that even distinguishing such mixtures from (pure) Gaussians may be exponentially hard (in ). We show that this kind of hardness can only appear if mixing weights are allowed to be exponentially small, and that for polynomially lower bounded mixing weights non-trivial algorithmic guarantees are possible in quasi-polynomial time. Concretely, we develop an algorithm based on the sum-of-squares method with running time quasi-polynomial in the minimum mixing weight. The algorithm can reliably distinguish between a mixture of $k\ge…
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Taxonomy
TopicsBayesian Methods and Mixture Models · Bayesian Modeling and Causal Inference · Data Management and Algorithms
