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FedDroidADP: An Adaptive Privacy-Preserving Framework for Federated-Learning-Based Android Malware Classification System | SpringerLink
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GitHub - sayakpaul/Adaptive-Gradient-Clipping: Minimal implementation of adaptive gradient clipping (https://arxiv.org/abs/2102.06171) in TensorFlow 2.
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Analysis of Gradient Clipping and Adaptive Scaling with a Relaxed Smoothness Condition | Semantic Scholar
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Analysis of Gradient Clipping and Adaptive Scaling with a Relaxed Smoothness Condition | Semantic Scholar
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Squeezing More Utility via Adaptive Clipping on Differentially Private Gradients in Federated Meta-Learning
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