In this letter, we design a novel distributed learning algorithm using stochastic compressed communications. In detail, we pursue a modular approach, merging ADMM and a gradient-based approach, benefiting from the robustness of the former and the computational efficiency of the latter. Additionally, we integrate a stochastic integral action (error feedback) enabling almost sure rejection of the compression error. We analyze the resulting method in nonconvex scenarios and guarantee almost sure asymptotic convergence to the set of stationary points of the problem. This result is obtained using system-theoretic tools based on stochastic timescale separation. We corroborate our findings with numerical simulations in nonconvex classification.

Carnevale, G., Bastianello, N. (2025). Modular Distributed Nonconvex Learning With Error Feedback. IEEE CONTROL SYSTEMS LETTERS, 9, 1604-1609 [10.1109/lcsys.2025.3582677].

Modular Distributed Nonconvex Learning With Error Feedback

Carnevale, Guido
Primo
;
2025

Abstract

In this letter, we design a novel distributed learning algorithm using stochastic compressed communications. In detail, we pursue a modular approach, merging ADMM and a gradient-based approach, benefiting from the robustness of the former and the computational efficiency of the latter. Additionally, we integrate a stochastic integral action (error feedback) enabling almost sure rejection of the compression error. We analyze the resulting method in nonconvex scenarios and guarantee almost sure asymptotic convergence to the set of stationary points of the problem. This result is obtained using system-theoretic tools based on stochastic timescale separation. We corroborate our findings with numerical simulations in nonconvex classification.
2025
Carnevale, G., Bastianello, N. (2025). Modular Distributed Nonconvex Learning With Error Feedback. IEEE CONTROL SYSTEMS LETTERS, 9, 1604-1609 [10.1109/lcsys.2025.3582677].
Carnevale, Guido; Bastianello, Nicola
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/1025493
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