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FL-MEC: Federated learning for network traffic classification on the network edge

creativeworkseries.issn1508-2806
dc.contributor.authorPaszko, Patryk
dc.contributor.authorKonieczny, Marek
dc.contributor.authorZieliński, Sławomir
dc.contributor.authorKwolek, Bartosz
dc.date.issued2025
dc.description.abstractNowadays, two technological trends, Federated Learning (FL) and Edge Computing (EC), are increasingly important and influential. FL is a decentralized machine learning strategy that allows learning on distributed data. It primarily allows performing learning operations close to the user, where the data is gathered. This approach belongs to the EC domain, where the main goal is to move computation closer to the end user (e.g., from the centralized cloud). In our work, we apply the FL and EC in the context of network flow classification. We achieved an accuracy of 0.957 with the FL model, compared to 0.924 for the best local model. We achieved these results thanks to the federated averaging performed on neural network layers. To verify our approach, we executed all our experiments on a virtualized environment that emulates existing mid-scale EC network infrastructure, including limitations related to resource constraints on edge nodes.en
dc.description.placeOfPublicationKraków
dc.description.versionwersja wydawnicza
dc.identifier.doihttps://doi.org/10.7494/csci.2025.26.4.7196
dc.identifier.eissn2300-7036
dc.identifier.issn1508-2806
dc.identifier.urihttps://repo.agh.edu.pl/handle/AGH/117703
dc.language.isoeng
dc.publisherWydawnictwa AGH
dc.relation.ispartofComputer Science
dc.rightsAttribution 4.0 International
dc.rights.accessotwarty dostęp
dc.rights.urihttps://creativecommons.org/licenses/by/4.0/legalcode
dc.subjectnetwork traffic classificationen
dc.subjectedge computingen
dc.subjectfederated learningen
dc.titleFL-MEC: Federated learning for network traffic classification on the network edgeen
dc.typeartykuł
dspace.entity.typePublication
publicationissue.issueNumberNo. 4
publicationissue.paginationpp. 181–201
publicationvolume.volumeNumberVol. 26
relation.isAuthorOfPublication27a8fd72-7c11-471d-80f1-af463850d3d3
relation.isAuthorOfPublication1d5c1f6b-32ee-4158-99b3-a80d6124ab4f
relation.isAuthorOfPublication915da3e7-6a54-48bc-8314-45642aecafc9
relation.isAuthorOfPublication.latestForDiscovery27a8fd72-7c11-471d-80f1-af463850d3d3
relation.isJournalIssueOfPublicationad13a817-a4f4-49ce-aa26-a74828c46103
relation.isJournalIssueOfPublication.latestForDiscoveryad13a817-a4f4-49ce-aa26-a74828c46103
relation.isJournalOfPublication020291ee-249b-4dcf-98a3-276a2f7981aa

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