Near-optimal Sample Complexity Bounds for Robust Learning of Gaussian Mixtures via Compression Schemes

Author:

Ashtiani Hassan1,Ben-David Shai2,Harvey Nicholas J. A.3,Liaw Christopher3,Mehrabian Abbas4ORCID,Plan Yaniv5

Affiliation:

1. McMaster University, Canada and Vector Institute, Toronto, Ontario, Canada

2. University of Waterloo, Waterloo, Ontario, Canada

3. University of British Columbia, British Columbia, Canada

4. McGill University, Montréal, Québec Canada

5. University of British Columbia, Vancouver, British Columbia, Canada

Abstract

We introduce a novel technique for distribution learning based on a notion of sample compression . Any class of distributions that allows such a compression scheme can be learned with few samples. Moreover, if a class of distributions has such a compression scheme, then so do the classes of products and mixtures of those distributions. As an application of this technique, we prove that ˜Θ( kd 22 ) samples are necessary and sufficient for learning a mixture of k Gaussians in R d , up to error ε in total variation distance. This improves both the known upper bounds and lower bounds for this problem. For mixtures of axis-aligned Gaussians, we show that Õ( kd2 ) samples suffice, matching a known lower bound. Moreover, these results hold in an agnostic learning (or robust estimation) setting, in which the target distribution is only approximately a mixture of Gaussians. Our main upper bound is proven by showing that the class of Gaussians in R d admits a small compression scheme.

Funder

NSERC

CRM-ISM postdoctoral fellowship and an IVADO-Apogée-CFREF postdoctoral fellowship

NSERC Discovery

Publisher

Association for Computing Machinery (ACM)

Subject

Artificial Intelligence,Hardware and Architecture,Information Systems,Control and Systems Engineering,Software

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1. MultiDrop: A Local Rademacher Complexity-Based Regularization for Multitask Models;2023 International Joint Conference on Neural Networks (IJCNN);2023-06-18

2. Optimal estimation of high-dimensional Gaussian location mixtures;The Annals of Statistics;2023-02-01

3. Statistically Near-Optimal Hypothesis Selection;2021 IEEE 62nd Annual Symposium on Foundations of Computer Science (FOCS);2022-02

4. A Theory of PAC Learnability of Partial Concept Classes;2021 IEEE 62nd Annual Symposium on Foundations of Computer Science (FOCS);2022-02

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