Litcius/Paper detail

Improved Gradient Inversion Attacks and Defenses in Federated Learning

Jiahui Geng, Yongli Mou, Qing Li, Feifei Li, Oya Beyan, Stefan Decker, Chunming Rong

2023IEEE Transactions on Big Data44 citationsDOI

Abstract

Gradient inversion attacks can reconstruct the victim's private data once they have access to the victim's model and gradient. However, existing research is still immature, and many attacks are conducted in ideal conditions. It is unclear how damaging such attacks really are and how they can be effectively defended. In this paper, we first summarize the current relevant researches and their limitations. Then we design a general gradient inversion attack framework, which can attack both FedSGD and FedAVG. We propose approaches to enhance the label inference and image restoration, respectively. Our approach surpasses the SOTA attacks, by successfully attacking the batches from ImageNet while other methods fail to attack. Finally, we suggest several defense strategies without any utility loss from extensive experiments. We are confirmed that our work makes people aware of the privacy issues and can actively avoid the potential risks.

Topics & Concepts

Computer scienceInversion (geology)InferenceComputer securityIdeal (ethics)Threat modelArtificial intelligenceGeologyPhilosophyEpistemologyPaleontologyStructural basinGeophysical Methods and ApplicationsPrivacy-Preserving Technologies in DataAdversarial Robustness in Machine Learning