基于卷积神经网络集成的隐私保护推理

Alexander Xiong, M. Nguyen, Andrew So, Tingting Chen
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引用次数: 0

摘要

云上的机器学习即服务不仅提供了扩展苛刻工作负载的解决方案,而且还允许更广泛地使用训练有素的深度神经网络。例如,在医疗领域,基于云的深度学习辅助诊断可以挽救生命,特别是在缺乏经验丰富的医生和领域专业知识的发展中地区。然而,在使用云服务进行深度学习的同时保护最终用户的数据隐私是一个挑战。最近一些基于完全同态加密的研究已经使神经网络能够对加密的输入数据进行预测。在本文中,我们通过多个深度神经网络模型对加密数据的联合决策,进一步扩展了保护隐私的深度神经网络推理能力,以解决局部训练数据集不平衡引起的偏差。特别地,我们设计并实现了一种通过卷积神经网络集成的隐私保护预测方法。大量的实验结果表明,与单个模型相比,我们的方法可以达到更高的精度,并在相同的水平上保护用户数据的隐私。我们还验证了我们实现的时间效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Privacy Preserving Inference with Convolutional Neural Network Ensemble
Machine Learning as a Service on cloud not only provides a solution to scale demanding workloads, but also allows broader accessibility for the utilization of trained deep neural networks. For example, in the medical field, cloud-based deep-learning assisted diagnoses can be life-saving, especially in developing areas where experienced doctors and domain expertise are lacking. However, preserving end-users' data privacy while using cloud service for deep learning is a challenge. Some recent works based on fully homomorphic encryption have enabled neural-network predictions on encrypted input data. In this paper, we further extend the capability of privacy preserving deep neural network inference, through a joint decision made by multiple deep neural network models on encrypted data, to address bias caused by unbalanced local training datasets. In particular, we design and implement a privacy preserving prediction method through an ensemble of convolutional neural networks. The extensive experiment results show that our method can achieve higher accuracy compared to individual models, and preserve the user data privacy at the same level. We also verify the time efficiency of our implementation.
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