基于区块链的车联网局部差分隐私下的位置隐私保护

Miao He, Fenhua Bai, Chi Zhang, Tao Shen, Bei Gong
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引用次数: 1

摘要

在车联网(IoV)中,位置和用户信息可以共享和交互,这给司机和消费者带来了很多好处。然而,随着他们的数据被外包给第三方,私人问题变得更加尖锐。在大数据环境下,敏感信息很容易被泄露。为了解决这些问题,提出了一种满足LDP (Local Differential Privacy)的位置数据算法来保护用户隐私。在本文中,我们使用随机响应机制重构拉普拉斯算法,使其满足LDP,从客户端扰动每个用户的原始位置。使用k-means聚类算法对用户位置进行聚类,扰动后的数据在区块链软件开发工具包(SDK)中进行降噪处理,降噪后的位置数据通过智能合约上传到区块链网络进行存储。此外,通过对比实验验证了隐私保护机制的有效性。与现有的隐私保护方法相比,该隐私保护机制不仅可以更好地满足用户的隐私需求,而且SDK中的降噪算法可以恢复原始数据,具有更高的数据可用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Blockchain-Enabled Location Privacy-preserving under Local Differential Privacy for Internet of Vehicles
Location and user information can be shared and interacted in the Internet of Vehicles (IoV), which bring many benefits to drivers and consumers. However, private issues become more acute as their data is outsourced to third parties. It is easy for sensitive information to be leaked in a big data environment. To solve these problems, a location data algorithm that satisfies Local Differential Privacy (LDP) is proposed to protect user privacy. In this paper, we use the randomized response mechanism to reconstruct the Laplace algorithm so that it satisfies LDP, perturbing the original location of each user from the client. The user location is clustered using k-means clustering algorithm, the perturbed data are noise reduced in the blockchain software development kit (SDK), and the noise reduced location data is uploaded to the blockchain network for storage through smart contracts. In addition, the effectiveness of the privacy protection mechanism is verified by comparative experiments. Compared with the existing privacy protection methods, the privacy protection mechanism not only can meet the privacy needs of users better, but also the noise reduction algorithm in the SDK can restore the original data and has higher data availability.
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