Security and Communication Networks • Vol 2022
Security and Privacy Threats to Federated Learning: Issues, Methods, and Challenges
September 2022 • Junpeng Zhang, Hui Zhu, Fengwei Wang, Jiaqi Zhao, Qi Xu, Hui Li
Federated learning (FL) has nourished a promising method for data silos, which enables multiple participants to construct a joint model collaboratively without centralizing data. The security and privacy considerations of FL are focused on ensuring the robustness of the global model and the privacy of participants’ information. However, the FL paradigm is under various security threats from the adversary aggregator and participants. Therefore, it is necessary to comprehensively identify and classify potential thre…