Robust Distribution Learning with Local and Global Adversarial Corruptions (extended Abstract)
Abstract
We consider learning in an adversarial environment, where an $\varepsilon$-fraction of samples from a distribution $P$ are arbitrarily modified (\emph{global} corruptions) and the remaining perturbations have average magnitude bounded by $\rho$ (\emph{local} corruptions). Given access to $n$ such corrupted samples, we seek a computationally efficient estimator $\hat{P}_n$ that minimizes the Wasserstein distance $W_1(\hat{P}_n,P)$. In fact, we attack the fine-grained task of minimizing $W_1(\Pi_\sharp \hat{P}_n, \Pi_\sharp P)$ for all orthogonal projections $\Pi \in \mathbb{R}^{d \times d}$, with performance scaling with $\mathrm{rank}(\Pi) = k$. This allows us to account simultaneously for mean estimation ($k=1$), distribution estimation ($k=d$), as well as the settings interpolating between these two extremes. We characterize the optimal population-limit risk for this task and then develop an efficient finite-sample algorithm with error bounded by $\sqrt{\varepsilon k} + \rho + \tilde{O}(k\sqrt{d}n^{-1/k})$ when $P$ has bounded covariance. Our efficient procedure relies on a novel trace norm approximation of an ideal yet intractable 2-Wasserstein projection estimator. We apply this algorithm to robust stochastic optimization, and, in the process, uncover a new method for overcoming the curse of dimensionality in Wasserstein distributionally robust optimization.
Cite
Text
Nietert et al. "Robust Distribution Learning with Local and Global Adversarial Corruptions (extended Abstract)." Conference on Learning Theory, 2024.Markdown
[Nietert et al. "Robust Distribution Learning with Local and Global Adversarial Corruptions (extended Abstract)." Conference on Learning Theory, 2024.](https://mlanthology.org/colt/2024/nietert2024colt-robust/)BibTeX
@inproceedings{nietert2024colt-robust,
title = {{Robust Distribution Learning with Local and Global Adversarial Corruptions (extended Abstract)}},
author = {Nietert, Sloan and Goldfeld, Ziv and Shafiee, Soroosh},
booktitle = {Conference on Learning Theory},
year = {2024},
pages = {4007-4008},
volume = {247},
url = {https://mlanthology.org/colt/2024/nietert2024colt-robust/}
}