PrivDNN: A Secure Multi-Party Computation Framework for Deep Learning using Partial DNN Encryption

Liangqin Ren, Zeyan Liu, Fengjun Li, Kaitai Liang, Zhu Li, Bo Luo
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Abstract

In the past decade, we have witnessed an exponential growth of deep learning models, platforms, and applications. While existing DL applications and Machine Learning as a service (MLaaS) frameworks assume fully trusted models, the need for privacy-preserving DNN evaluation arises. In a secure multi-party computation scenario, both the model and the data are considered proprietary, i.e., the model owner does not want to reveal the highly valuable DL model to the user, while the user does not wish to disclose their private data samples either. Conventional privacy-preserving deep learning solutions ask the users to send encrypted samples to the model owners, who must handle the heavy lifting of ciphertext-domain computation with homomorphic encryption. In this paper, we present a novel solution, namely, PrivDNN, which (1) offloads the computation to the user side by sharing an encrypted deep learning model with them, (2) significantly improves the efficiency of DNN evaluation using partial DNN encryption, (3) ensures model accuracy and model privacy using a core neuron selection and encryption scheme. Experimental results show that PrivDNN reduces privacy-preserving DNN inference time and memory requirement by up to 97% while maintaining model performance and privacy. Codes can be found at https://github.com/LiangqinRen/PrivDNN
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PrivDNN:使用部分 DNN 加密的深度学习多方安全计算框架
在过去十年中,我们见证了深度学习模型、平台和应用的指数级增长。虽然现有的深度学习应用和机器学习即服务(MLaaS)框架假定模型是完全可信的,但也出现了保护隐私的 DNN 评估需求。在安全的多方计算场景中,模型和数据都被认为是专有的,即模型所有者不想向用户透露高价值的 DL 模型,而用户也不想透露自己的私人数据样本。传统的隐私保护深度学习解决方案要求用户向模型所有者发送加密样本,而模型所有者必须使用同态加密技术处理繁重的密文域计算工作。在本文中,我们提出了一种新颖的解决方案,即 PrivDNN,它(1)通过与用户共享加密的深度学习模型,将计算卸载到用户端;(2)利用部分 DNN 加密显著提高 DNN 评估的效率;(3)利用核心神经元选择和加密方案确保模型的准确性和模型的隐私性。实验结果表明,PrivDNN 在保持模型性能和隐私的同时,将保护隐私的 DNN 推理时间和内存需求减少了 97%。代码见 https://github.com/LiangqinRen/PrivDNN
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