Learning GMMs with Nearly Optimal Robustness Guarantees
Abstract
In this work we solve the problem of robustly learning a high-dimensional Gaussian mixture model with $k$ components from $\epsilon$-corrupted samples up to accuracy $\widetilde{O}(\epsilon)$ in total variation distance for any constant $k$ and with mild assumptions on the mixture. This robustness guarantee is optimal up to polylogarithmic factors. The main challenge is that most earlier works rely on learning individual components in the mixture, but this is impossible in our setting, at least for the types of strong robustness guarantees we are aiming for. Instead we introduce a new framework which we call {\em strong observability} that gives us a route to circumvent this obstacle.
Cite
Text
Liu and Moitra. "Learning GMMs with Nearly Optimal Robustness Guarantees." Conference on Learning Theory, 2022.Markdown
[Liu and Moitra. "Learning GMMs with Nearly Optimal Robustness Guarantees." Conference on Learning Theory, 2022.](https://mlanthology.org/colt/2022/liu2022colt-learning/)BibTeX
@inproceedings{liu2022colt-learning,
title = {{Learning GMMs with Nearly Optimal Robustness Guarantees}},
author = {Liu, Allen and Moitra, Ankur},
booktitle = {Conference on Learning Theory},
year = {2022},
pages = {2815-2895},
volume = {178},
url = {https://mlanthology.org/colt/2022/liu2022colt-learning/}
}