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Smart city article details

Title Federated Cyberattack Detection For Internet Of Things-Enabled Smart Cities
ID_Doc 26318
Authors Matheu S.N.; Marmol E.; Hernandez-Ramos J.L.; Skarmeta A.; Baldini G.
Year 2022
Published Computer, 55, 12
DOI http://dx.doi.org/10.1109/MC.2022.3195054
Abstract While attack detection is key to realize trustworthy smart cities, the use of large amounts of network traffic data by machine learning techniques can lead to privacy issues for citizens. To face this issue, we propose a federated learning approach in the context of Internet of Things-enabled smart cities integrating the Threat and Manufacturer Usage Description files as a prevention/mitigation approach. © 1970-2012 IEEE.
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