Unlabeled Data Help: Minimax Analysis and Adversarial Robustness
Abstract
The recent proposed self-supervised learning (SSL) approaches successfully demonstrate the great potential of supplementing learning algorithms with additional unlabeled data. However, it is still unclear whether the existing SSL algorithms can fully utilize the information of both labelled and unlabeled data. This paper gives an affirmative answer for the reconstruction-based SSL algorithm (Lee et al., 2020) under several statistical models. While existing literature only focuses on establishing the upper bound of the convergence rate, we provide a rigorous minimax analysis, and successfully justify the rate-optimality of the reconstruction-based SSL algorithm under different data generation models. Furthermore, we incorporate the reconstruction-based SSL into the exist- ing adversarial training algorithms and show that learning from unlabeled data helps improve the robustness.
Cite
Text
Xing et al. " Unlabeled Data Help: Minimax Analysis and Adversarial Robustness ." Artificial Intelligence and Statistics, 2022.Markdown
[Xing et al. " Unlabeled Data Help: Minimax Analysis and Adversarial Robustness ." Artificial Intelligence and Statistics, 2022.](https://mlanthology.org/aistats/2022/xing2022aistats-unlabeled/)BibTeX
@inproceedings{xing2022aistats-unlabeled,
title = {{ Unlabeled Data Help: Minimax Analysis and Adversarial Robustness }},
author = {Xing, Yue and Song, Qifan and Cheng, Guang},
booktitle = {Artificial Intelligence and Statistics},
year = {2022},
pages = {136-168},
volume = {151},
url = {https://mlanthology.org/aistats/2022/xing2022aistats-unlabeled/}
}