Compressed and distributed least-squares regression: convergence rates with applications to Federated Learning
Constantin Philippenko, Aymeric Dieuleveut

TL;DR
This paper studies how compression affects convergence rates of stochastic gradient algorithms in distributed and federated learning, providing new theoretical insights into variance scaling and the impact of different compression methods.
Contribution
It offers a novel analysis of convergence rates for compressed stochastic gradient algorithms in least-squares regression, extending to federated learning scenarios.
Findings
Convergence rate scales with trace of noise covariance and inverse Hessian.
Different unbiased compression operators have quantifiable impacts on convergence.
Results generalize classical least-squares regression rates to compressed and federated settings.
Abstract
In this paper, we investigate the impact of compression on stochastic gradient algorithms for machine learning, a technique widely used in distributed and federated learning. We underline differences in terms of convergence rates between several unbiased compression operators, that all satisfy the same condition on their variance, thus going beyond the classical worst-case analysis. To do so, we focus on the case of least-squares regression (LSR) and analyze a general stochastic approximation algorithm for minimizing quadratic functions relying on a random field. We consider weak assumptions on the random field, tailored to the analysis (specifically, expected H\"older regularity), and on the noise covariance, enabling the analysis of various randomizing mechanisms, including compression. We then extend our results to the case of federated learning. More formally, we highlight the…
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Taxonomy
TopicsStochastic Gradient Optimization Techniques · Privacy-Preserving Technologies in Data · Sparse and Compressive Sensing Techniques
MethodsFocus
