Communication-Efficient and Privacy-Aware Distributed Learning

dc.contributorAalto-yliopistofi
dc.contributorAalto Universityen
dc.contributor.authorGogineni, Vinay Chakravarthien_US
dc.contributor.authorMoradi, Ashkanen_US
dc.contributor.authorVenkategowda, Naveen K.D.en_US
dc.contributor.authorWerner, Stefanen_US
dc.contributor.departmentDepartment of Information and Communications Engineeringen
dc.contributor.organizationUniversity of Southern Denmarken_US
dc.contributor.organizationNorwegian University of Science and Technologyen_US
dc.contributor.organizationLinköping Universityen_US
dc.date.accessioned2024-01-04T09:09:21Z
dc.date.available2024-01-04T09:09:21Z
dc.date.issued2023en_US
dc.descriptionPublisher Copyright: © 2015 IEEE.
dc.description.abstractCommunication efficiency and privacy are two key concerns in modern distributed computing systems. Towards this goal, this article proposes partial sharing private distributed learning (PPDL) algorithms that offer communication efficiency while preserving privacy, thus making them suitable for applications with limited resources in adversarial environments. First, we propose a noise injection-based PPDL algorithm that achieves communication efficiency by sharing only a fraction of the information at each consensus iteration and provides privacy by perturbing the information exchanged among neighbors. To further increase privacy, local information is randomly decomposed into private and public substates before sharing with the neighbors. This results in a decomposition-and noise-injection-based PPDL strategy in which only a freaction of the perturbeesd public substate is shared during local collaborations, whereas the private substate is updated locally without being shared. To determine the impact of communication savings and privacy preservation on the performance of distributed learning algorithms, we analyze the mean and mean-square convergence of the proposed algorithms. Moreover, we investigate the privacy of agents by characterizing privacy as the mean squared error of the estimate of private information at the honest-but-curious adversary. The analytical results show a tradeoff between communication efficiency and privacy in proposed PPDL algorithms, while decomposition-and noise-injection-based PPDL improves privacy compared to noise-injection-based PPDL. Lastly, numerical simulations corroborate the analytical findings.en
dc.description.versionPeer revieweden
dc.format.extent16
dc.format.mimetypeapplication/pdfen_US
dc.identifier.citationGogineni, V C, Moradi, A, Venkategowda, N K D & Werner, S 2023, 'Communication-Efficient and Privacy-Aware Distributed Learning', IEEE Transactions on Signal and Information Processing over Networks, vol. 9, pp. 705-720. https://doi.org/10.1109/TSIPN.2023.3322783en
dc.identifier.doi10.1109/TSIPN.2023.3322783en_US
dc.identifier.issn2373-776X
dc.identifier.otherPURE UUID: becf0e6b-c2ef-4951-a040-518d1293d0acen_US
dc.identifier.otherPURE ITEMURL: https://research.aalto.fi/en/publications/becf0e6b-c2ef-4951-a040-518d1293d0acen_US
dc.identifier.otherPURE FILEURL: https://research.aalto.fi/files/131613352/werner_tsipn-1.pdf
dc.identifier.urihttps://aaltodoc.aalto.fi/handle/123456789/125513
dc.identifier.urnURN:NBN:fi:aalto-202401041202
dc.language.isoenen
dc.publisherIEEE
dc.relation.ispartofseriesIEEE Transactions on Signal and Information Processing over Networksen
dc.relation.ispartofseriesVolume 9, pp. 705-720en
dc.rightsopenAccessen
dc.subject.keywordAverage consensusen_US
dc.subject.keywordcommunication efficiencyen_US
dc.subject.keyworddistributed learningen_US
dc.subject.keywordmultiagent systemsen_US
dc.subject.keywordprivacy-preservationen_US
dc.titleCommunication-Efficient and Privacy-Aware Distributed Learningen
dc.typeA1 Alkuperäisartikkeli tieteellisessä aikakauslehdessäfi
dc.type.versionacceptedVersion

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