首页> 外文会议>IEEE International Conference on Communications >A Novel Privacy-Preserving Neural Network Computing Approach for E-Health Information System
【24h】

A Novel Privacy-Preserving Neural Network Computing Approach for E-Health Information System

机译:一种用于电子健康信息系统的新型隐私保留神经网络计算方法

获取原文

摘要

Electronic health (e-health) information system relies on cloud computing technologies to provide massive medical data computing and storage services. Especially, the recently proposed Machine Learning as a Service (MLaaS) on these medical data can not only effectively improve the healthcare service quality, but also support the end users with limited computing resources. However, MLaaS on the massive medical data faces the challenge of privacy. Homomorphic encryption technology has been explored to assure the privacy of medical data owners in MLaaS but with the weaknesses of limited homomorphic operations and low efficiency. To alleviate these weaknesses, this paper proposes a novel privacy-preserving non-collusion dualcloud (NCDC) model-based e-health information system using neural network (NN) computing. The system can not only assure medical data privacy through adopting homomorphic encryption technology but also assure NN model privacy by adding fake neurons to the NN. In addition, the proposed e-health information system also has the following advantages: (i) Simple key generation. (ii) No constraint on the size of medical data to be encrypted. (iii) The less loss of prediction accuracy between encrypted and original medical data. (iv) Supporting more homomorphic operations and having better computing efficiency through experiment verification.
机译:电子健康(电子健康)信息系统依赖于云计算技术提供大规模的医疗数据计算和存储服务。特别是,最近提出的机器学习作为服务(MLAAS)在这些医疗数据上不仅可以有效地提高医疗保健服务质量,而且还支持有限的计算资源的最终用户。然而,MARAAS在大规模医学数据上面临着隐私的挑战。探讨了同种式加密技术,以确保MLAAS中医疗数据所有者的隐私,但具有有限的同态操作和低效率的弱点。为了缓解这些弱点,本文提出了一种使用神经网络(NN)计算的新型隐私保留非勾结双链(NCDC)模型的电子健康信息系统。该系统不能通过采用同性恋加密技术来确保医疗数据隐私,但也通过向NN添加假神经元来确保NN模型隐私。此外,所提出的电子健康信息系统还具有以下优点:(i)简单的关键一代。 (ii)没有关于要加密的医疗数据大小的约束。 (iii)加密和原始医疗数据之间的预测准确性较少。 (iv)通过实验验证支持更多同种性的操作并具有更好的计算效率。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号