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Explore a groundbreaking anomaly detection method for Federated Learning, proactively defending against attacks without prior knowledge.
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This paper introduces a cutting-edge anomaly detection approach for Federated Learning systems, addressing real-world challenges. Proactively detecting attacks, eliminating malicious client submissions without harming benign ones, and ensuring robust verification with Zero-Knowledge Proof make this method groundbreaking for privacy-preserving machine learning.