PCDM uses a poisoning-oriented conditional diffusion model with an adjustable vector and jumping strategy to create stealthier and more effective poisoned data than GAN-based attacks against federated learning.
Manipulating the byzantine: Opti- mizing model poisoning attacks and defenses for federated learning
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DP2Guard is a proposed lightweight PPFL framework that combines gradient masking for privacy, hybrid anomaly detection via SVD and clustering for Byzantine robustness, trust-based adaptive aggregation, and blockchain logging for Industrial IoT.