SQ Lower Bounds for Non-Gaussian Component Analysis with Weaker Assumptions
Abstract
We study the complexity of Non-Gaussian Component Analysis (NGCA) in the Statistical Query (SQ) model.Prior work developed a methodology to prove SQ lower bounds for NGCA that have been applicable to a wide range of contexts.In particular, it was known that for any univariate distribution $A$ satisfying certain conditions,distinguishing between a standard multivariate Gaussian and a distribution that behaves like $A$ in a random hidden direction and like a standard Gaussian in the orthogonal complement, is SQ-hard.The required conditions were that (1) $A$ matches many low-order moments with a standard Gaussian,and (2) the chi-squared norm of $A$ with respect to the standard Gaussian is finite.While the moment-matching condition is clearly necessary for hardness, the chi-squared condition was only required for technical reasons.In this work, we establish that the latter condition is indeed not necessary.In particular, we prove near-optimal SQ lower bounds for NGCA under the moment-matching condition only.
Cite
Text
Diakonikolas et al. "SQ Lower Bounds for Non-Gaussian Component Analysis with Weaker Assumptions." Neural Information Processing Systems, 2023.Markdown
[Diakonikolas et al. "SQ Lower Bounds for Non-Gaussian Component Analysis with Weaker Assumptions." Neural Information Processing Systems, 2023.](https://mlanthology.org/neurips/2023/diakonikolas2023neurips-sq/)BibTeX
@inproceedings{diakonikolas2023neurips-sq,
title = {{SQ Lower Bounds for Non-Gaussian Component Analysis with Weaker Assumptions}},
author = {Diakonikolas, Ilias and Kane, Daniel and Ren, Lisheng and Sun, Yuxin},
booktitle = {Neural Information Processing Systems},
year = {2023},
url = {https://mlanthology.org/neurips/2023/diakonikolas2023neurips-sq/}
}