具有自调优压缩的私有联邦学习

Enayat Ullah, Christopher A. Choquette-Choo, P. Kairouz, Sewoong Oh
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引用次数: 1

摘要

我们提出了在不需要设置或调整压缩率的情况下减少私有联邦学习中的通信的新技术。我们的实时方法根据训练过程中产生的错误自动调整压缩率,同时通过使用安全聚合和差分隐私来保持可证明的隐私保证。我们的技术对于平均估计来说是可证明的实例最优的,这意味着它们可以以最小的交互性适应“问题的难度”。我们通过在不需要调优的情况下获得有利的压缩率,证明了我们的方法在真实数据集上的有效性。
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Private Federated Learning with Autotuned Compression
We propose new techniques for reducing communication in private federated learning without the need for setting or tuning compression rates. Our on-the-fly methods automatically adjust the compression rate based on the error induced during training, while maintaining provable privacy guarantees through the use of secure aggregation and differential privacy. Our techniques are provably instance-optimal for mean estimation, meaning that they can adapt to the ``hardness of the problem"with minimal interactivity. We demonstrate the effectiveness of our approach on real-world datasets by achieving favorable compression rates without the need for tuning.
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