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Dropout-Robust Mechanisms for Differentially Private and Fully Decentralized Mean Estimation
Achieving differentially private computations in decentralized settings poses significant challenges, particularly regarding accuracy, communication cost, and robustness against information leakage. While cryptographic solutions offer promise, they often suffer from high communication overhead or...
Differential Privacy Analysis of Decentralized Gossip Averaging under Varying Threat Models
Fully decentralized training of machine learning models offers significant advantages in scalability, robustness, and fault tolerance. However, achieving differential privacy DP in such settings is challenging due to the absence of a central aggregator and varying trust assumptions among nodes. I...