Adversary-Robust Learning from Fully Asynchronous Directional Derivative Estimates
Abstract
We propose FAR-SIGN (Fully Asynchronous Robust optimization via SIGNed directional projections) for adversary-resilient learning in parameter-server--worker systems. FAR-SIGN achieves robustness through sign-based updates along carefully designed directions and mitigates the resulting bias via a two-timescale mechanism. It admits both first-order and zeroth-order implementations and enables fully asynchronous execution without requiring a private reference dataset at the server. We establish almost-sure convergence of FAR-SIGN to the set of stationary points for smooth, nonconvex objectives. Moreover, we prove the near-optimal rate of in the first-order setting and the standard in the zeroth-order setting, where is the iteration count and can be chosen arbitrarily small. Experiments on MNIST show that FAR-SIGN outperforms robust aggregation-based methods in both accuracy and wall-clock time.
Cite
@article{arxiv.2605.09337,
title = {Adversary-Robust Learning from Fully Asynchronous Directional Derivative Estimates},
author = {Anik Kumar Paul and Nibedita Roy and Nagesh Talagani and Swetha Ganesh and Gugan Thoppe and Alexandre Reiffers-Masson},
journal= {arXiv preprint arXiv:2605.09337},
year = {2026}
}