Communication-Efficient Regret-Optimal Distributed Online Convex Optimization
Online convex optimization in distributed systems has shown great promise in collaboratively learning on data streams with massive learners, such as in collaborative coordination in robot and IoT networks. When implemented in communication-constrained networks like robot and IoT networks, two critic...
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Veröffentlicht in: | IEEE transactions on parallel and distributed systems 2024-11, Vol.35 (11), p.2270-2283 |
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Zusammenfassung: | Online convex optimization in distributed systems has shown great promise in collaboratively learning on data streams with massive learners, such as in collaborative coordination in robot and IoT networks. When implemented in communication-constrained networks like robot and IoT networks, two critical yet distinct objectives in distributed online convex optimization (DOCO) are minimizing the overall regret and the communication cost. Achieving both objectives simultaneously is challenging, especially when the number of learners n n and learning time T T are prohibitively large. To address this challenge, we propose novel algorithms in typical adversarial and stochastic settings. Our algorithms significantly reduce the communication complexity of the algorithms with the state-of-the-art regret by a factor of \mathcal {O}(n^{2}) O(n2) and \tilde{\mathcal {O}}(\sqrt{nT}) O˜(nT) in adversarial and stochastic settings, respectively. We are the first to achieve nearly optimal regret and communication complexity simultaneously up to polylogarithmic factors. We validate our algorithms through experiments on real-world datasets in classification tasks. Our algorithms with appropriate parameters can achieve 90\%\sim 99\% 90%∼99% communicatio |
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ISSN: | 1045-9219 1558-2183 |
DOI: | 10.1109/TPDS.2024.3403883 |