In this paper, we propose a unified compression algorithm for distributed nonconvex opitmization with both the locally- and globally-bounded communication compressors, including 1-bit compressors, saturating quantizers, and the globally-bounded compressors with both relative and absolute compression errors, as well as additional arbitrary bounded noise. We provide a rigorous convergence analysis in nonconvex settings and establish linear convergence under the Polyak-Lojasiewicz (P-L) condition. Notably, we establish an O(1/T) convergence rate for the locally-bounded class in the distributed nonconvex setting, matching that achieved by the centralized algorithms with 1-bit compressors, where T denotes the total number of iterations. Moreover, one initial uncompressed communication round further yields an order-wise improvement to O(1/T2/3). For the P-L setting and the globally-bounded class, we recover state-of-the-art convergence rates.
@article{arxiv.2604.10615,
title = {Unified Compression Algorithm for Distributed Nonconvex Optimization: Generalized to 1-Bit, Saturation, and Bounded Noise},
author = {Haonan Wang and Minghui Liwang and Yiguang Hong and Karl H. Johansson and Xinlei Yi},
journal= {arXiv preprint arXiv:2604.10615},
year = {2026}
}