2023
DOI: 10.1155/2023/9597905
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Defending Privacy Inference Attacks to Federated Learning for Intelligent IoT with Parameter Compression

Abstract: Federated learning has been popularly studied with people’s increasing awareness of privacy protection. It solves the problem of privacy leakage by its ability that allows many clients to train a collaborative model without uploading local data collected by Internet of Things (IoT) devices. However, there are still threats of privacy leakage in federated learning. The privacy inference attacks can reconstruct the privacy data of other clients based on GAN from the parameters in the process of iterations for gl… Show more

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References 54 publications
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