边缘计算中基于拉普拉斯机制和认证访问的模糊卷积神经网络差分隐私

Jhilakshi Sharma, Donghyun Kim, Ahyoung Lee, Daehee Seo
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引用次数: 1

摘要

近年来,移动边缘计算受到了学术界和工业界的广泛关注。然而,许多人发现,这种新兴架构需要在移动边缘节点上建立适当的数据隐私保护机制,以防止授权数据分析师意外使用数据。因此,开发一种合适的轻量级隐私保护数据分析机制迫在眉睫。因此,我们提出了DP-FCNN,这是一个轻量级的差分隐私(DP)框架,使用模糊卷积神经网络(FCNN)和拉普拉斯机制,在用户将生成数据的数据上传到存储之前向个人数据注入噪声,这样数据仍然有用,但数据隐私可以得到适当的保护,防止未经授权的数据分析企图。我们实现了提出的框架,并在可伸缩性、处理时间和准确性方面测试了它的性能。结果表明,该框架具有很强的实用性。
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Differential Privacy using Fuzzy Convolution Neural Network (DP-FCNN) with Laplace Mechanism and Authenticated Access in Edge Computing
During recent years, mobile edge computing is getting much attention from both academia and industry. However, many found that this emerging architecture needs a proper data privacy protection mechanism at mobile edge nodes against unintended data use by authorized data analysts. Due to the reason, the development of a proper lightweight privacy-preserving data analysis mechanism is of great urgency. Thus, we propose DP-FCNN, a light-weight Differential Privacy (DP) framework using Fuzzy Convolution Neural Network (FCNN) with Laplace Mechanism which injects noise into the personal data before uploading data from users generating the data into the storage so that the data is still useful but data privacy can be properly protected against unauthorized data analysis attempt. We implemented the proposed framework, and tested its performance in terms of scalability, processing time, and accuracy. The result shows that the proposed framework is very practical.
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