Victor Eremeev
Robust Online Learning over Networks
Deplano, DiegoCo-prime
;Franceschelli, MauroPenultimate
;
2024-01-01
Abstract
The recent deployment of multi-agent networks has enabled the distributed solution of learning problems, where agents cooperate to train a global model without sharing their local, private data. This work specifically targets some prevalent challenges inherent to distributed learning: (i) online training, i.e., the local data change over time; (ii) asynchronous agent computations; (iii) unreliable and limited communications; and (iv) inexact local computations. To tackle these challenges, we apply the Distributed Operator Theoretical (DOT) version of the Alternating Direction Method of Multipliers (ADMM), which we call "DOT-ADMM". We prove that if the DOT-ADMM operator is metric subregular, then it converges with a linear rate for a large class of (not necessarily strongly) convex learning problems toward a bounded neighborhood of the optimal time-varying solution, and characterize how such neighborhood depends on (i)-(iv). We first derive an easy-to-verify condition for ensuring the metric subregularity of an operator, followed by tutorial examples on linear and logistic regression problems. We corroborate the theoretical analysis with numerical simulations comparing DOT-ADMM with other state-of-the-art algorithms, showing that only the proposed algorithm exhibits robustness to (i)-(iv).| File | Size | Format | |
|---|---|---|---|
| 10.1109TAC.2024.3441723.pdf open access
Type: Author’s Accepted Manuscript AAM, Post-print, (version accepted by the publisher)
Size 3 MB
Format Adobe PDF
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3 MB | Adobe PDF | View/Open |
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