Anti-leakage method of network sensitive information data based on homomorphic encryption

IF 2.1 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Journal of Intelligent Systems Pub Date : 2023-01-01 DOI:10.1515/jisys-2022-0281
Junlong Shi, Xiaofeng Zhao
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Abstract

Abstract With the development of artificial intelligence, people begin to pay attention to the protection of sensitive information and data. Therefore, a homomorphic encryption framework based on effective integer vector is proposed and applied to deep learning to protect the privacy of users in binary convolutional neural network model. The conclusion shows that the model can achieve high accuracy. The training is 93.75% in MNIST dataset and 89.24% in original dataset. Because of the confidentiality of data, the training accuracy of the training set is only 86.77%. After increasing the training period, the accuracy began to converge to about 300 cycles, and finally reached about 86.39%. In addition, after taking the absolute value of the elements in the encryption matrix, the training accuracy of the model is 88.79%, and the test accuracy is 85.12%. The improved model is also compared with the traditional model. This model can reduce the storage consumption in the model calculation process, effectively improve the calculation speed, and have little impact on the accuracy. Specifically, the speed of the improved model is 58 times that of the traditional CNN model, and the storage consumption is 1/32 of that of the traditional CNN model. Therefore, homomorphic encryption can be applied to information encryption under the background of big data, and the privacy of the neural network can be realized.
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基于同态加密的网络敏感信息数据防泄漏方法
随着人工智能的发展,人们开始关注敏感信息和数据的保护。为此,提出了一种基于有效整数向量的同态加密框架,并将其应用于深度学习中,以保护二元卷积神经网络模型中用户的隐私。结果表明,该模型能够达到较高的精度。MNIST数据集的训练率为93.75%,原始数据集的训练率为89.24%。由于数据的保密性,训练集的训练准确率仅为86.77%。增加训练周期后,准确率开始收敛到300次左右,最终达到86.39%左右。此外,取加密矩阵中元素的绝对值后,该模型的训练准确率为88.79%,测试准确率为85.12%。并将改进后的模型与传统模型进行了比较。该模型可以减少模型计算过程中的存储消耗,有效提高计算速度,对精度影响较小。具体来说,改进模型的速度是传统CNN模型的58倍,存储消耗是传统CNN模型的1/32。因此,可以将同态加密应用于大数据背景下的信息加密,实现神经网络的隐私性。
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来源期刊
Journal of Intelligent Systems
Journal of Intelligent Systems COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE-
CiteScore
5.90
自引率
3.30%
发文量
77
审稿时长
51 weeks
期刊介绍: The Journal of Intelligent Systems aims to provide research and review papers, as well as Brief Communications at an interdisciplinary level, with the field of intelligent systems providing the focal point. This field includes areas like artificial intelligence, models and computational theories of human cognition, perception and motivation; brain models, artificial neural nets and neural computing. It covers contributions from the social, human and computer sciences to the analysis and application of information technology.
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