Taming Fat-Tailed ("Heavier-Tailed'' with Potentially Infinite Variance) Noise in Federated Learning

October 03, 2022 ยท Declared Dead ยท ๐Ÿ› Neural Information Processing Systems

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Authors Haibo Yang, Peiwen Qiu, Jia Liu arXiv ID 2210.00690 Category cs.LG: Machine Learning Cross-listed cs.AI, cs.DC Citations 18 Venue Neural Information Processing Systems Last Checked 3 months ago
Abstract
A key assumption in most existing works on FL algorithms' convergence analysis is that the noise in stochastic first-order information has a finite variance. Although this assumption covers all light-tailed (i.e., sub-exponential) and some heavy-tailed noise distributions (e.g., log-normal, Weibull, and some Pareto distributions), it fails for many fat-tailed noise distributions (i.e., ``heavier-tailed'' with potentially infinite variance) that have been empirically observed in the FL literature. To date, it remains unclear whether one can design convergent algorithms for FL systems that experience fat-tailed noise. This motivates us to fill this gap in this paper by proposing an algorithmic framework called FAT-Clipping (\ul{f}ederated \ul{a}veraging with \ul{t}wo-sided learning rates and \ul{clipping}), which contains two variants: FAT-Clipping per-round (FAT-Clipping-PR) and FAT-Clipping per-iteration (FAT-Clipping-PI). Specifically, for the largest $ฮฑ\in (1,2]$ such that the fat-tailed noise in FL still has a bounded $ฮฑ$-moment, we show that both variants achieve $\mathcal{O}((mT)^{\frac{2-ฮฑ}ฮฑ})$ and $\mathcal{O}((mT)^{\frac{1-ฮฑ}{3ฮฑ-2}})$ convergence rates in the strongly-convex and general non-convex settings, respectively, where $m$ and $T$ are the numbers of clients and communication rounds. Moreover, at the expense of more clipping operations compared to FAT-Clipping-PR, FAT-Clipping-PI further enjoys a linear speedup effect with respect to the number of local updates at each client and being lower-bound-matching (i.e., order-optimal). Collectively, our results advance the understanding of designing efficient algorithms for FL systems that exhibit fat-tailed first-order oracle information.
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