Privacy Protection Based on Federated Learning

Bin Liu, Eric B. Blancaflor, Tianke Fang, Limin Cao
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Abstract

With the development of artificial intelligence technology, more and more fields will collect relevant user data, and provide users with a better experience through data analysis. But there are also risks involved in the process of data collection, namely how to protect personal privacy data. To address this issue, this study combined differential privacy, convolutional neural networks, and federated averaging algorithms to construct a privacy protection model. The study first utilized the federated average algorithm to handle data imbalance, ensuring that each analyzed data is in a balanced state. Then, based on of data balancing, a new algorithm model was constructed using differential privacy and convolutional neural networks. Finally, it utilized a number of public datasets to verify the role of the model in privacy protection. The results showed that the model can achieve recognition accuracy of 97.27% and 93.15%, respectively , for data under the influence of privacy budget and relaxation factor. Meanwhile, the classification accuracy of the model for data can reached 95.31%, with a regression error of 9.03%. When the local iteration number of the device was 30, the testing accuracy can reached 95.28%. This indicates that methods on the grounds of federated averaging algorithm and differential privacy can maintain the accuracy of the model while protecting user privacy. The application research of models has strong practical significance.
基于联合学习的隐私保护
随着人工智能技术的发展,越来越多的领域会收集相关的用户数据,并通过数据分析为用户提供更好的体验。但数据收集过程中也存在风险,即如何保护个人隐私数据。针对这一问题,本研究结合差分隐私、卷积神经网络和联合平均算法,构建了一个隐私保护模型。研究首先利用联合平均算法处理数据不平衡问题,确保每个分析数据都处于平衡状态。然后,在数据平衡的基础上,利用差分隐私和卷积神经网络构建了一个新的算法模型。最后,利用一些公共数据集来验证该模型在隐私保护中的作用。结果表明,在隐私预算和松弛因子的影响下,该模型对数据的识别准确率分别达到了 97.27% 和 93.15%。同时,模型对数据的分类准确率可达 95.31%,回归误差为 9.03%。当设备的局部迭代次数为 30 次时,测试准确率可达 95.28%。这说明基于联合平均算法和差分隐私的方法可以在保护用户隐私的同时保持模型的准确性。模型的应用研究具有很强的现实意义。
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