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Towards Efficient and Privacy-Preserving Federated Deep Learning

机译:走向高效且保护隐私的联合深度学习

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摘要

Deep learning has been applied in many areas, such as computer vision, natural language processing and emotion analysis. Differing from the traditional deep learning that collects users' data centrally, federated deep learning requires participants to train the networks on private datasets and share the training results, and hence has more gratifying efficiency and stronger security. However, it still presents some privacy issues since adversaries can deduce users' privacy from local outputs, such as gradients. While the problem of private federated deep learning has been an active research issue, the latest research findings are still inadequate in terms of security, accuracy and efficiency. In this paper, we propose an efficient and privacy-preserving federated deep learning protocol based on stochastic gradient descent method by integrating the additively homomorphic encryption with differential privacy. Specifically, users add noises to each local gradients before encrypting them to obtain the optical performance and security. Moreover, our scheme is secure to honest-but-curious server setting even if the cloud server colludes with multiple users. Besides, our scheme supports federated learning for large-scale users scenarios and extensive experiments demonstrate our scheme has high efficiency and high accuracy compared with non-private model.
机译:深度学习已应用于许多领域,例如计算机视觉,自然语言处理和情感分析。与传统的深度学习集中收集用户数据的传统深度学习不同,联合深度学习要求参与者在专用数据集上训练网络并共享训练结果,因此具有更高的满意度和更强的安全性。但是,它仍然存在一些隐私问题,因为对手可以从本地输出(例如渐变)中推断出用户的隐私。尽管私有联合深度学习的问题一直是一个活跃的研究问题,但就安全性,准确性和效率而言,最新的研究成果仍然不足。在本文中,我们通过将可加同态加密与差分隐私集成在一起,提出了一种基于随机梯度下降方法的高效且隐私保护的联合深度学习协议。具体来说,用户在对每个局部梯度进行加密之前将噪声添加到每个局部梯度中,以获得光学性能和安全性。此外,即使云服务器与多个用户串通,我们的方案对于诚实但好奇的服务器设置也是安全的。此外,我们的方案支持针对大规模用户场景的联合学习,并且广泛的实验表明,与非私有模型相比,该方案具有更高的效率和准确性。

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