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Asymmetric Social Proximity Based Private Matching Protocols for Online Social Networks

机译:在线社交网络的基于非对称社交接近度的私人匹配协议

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摘要

The explosive growth of Online Social Networks (OSNs) over the past few years has redefined the way people interact with existing friends and especially make new friends. Some works propose to let people become friends if they have similar profile attributes. However, profile matching involves an inherent privacy risk of exposing private profile information to strangers in the cyberspace. The existing solutions to the problem attempt to protect users’ privacy by privately computing the intersection or intersection cardinality of the profile attribute sets of two users. These schemes have some limitations and can still reveal users’ privacy. In this paper, we leverage community structures to redefine the OSN model and propose a realistic asymmetric social proximity measure between two users. Then, based on the proposed asymmetric social proximity, we design three private matching protocols, which provide different privacy levels and can protect users’ privacy better than the previous works. We also analyze the computation and communication cost of these protocols. Finally, we validate our proposed asymmetric proximity measure using real social network data and conduct extensive simulations to evaluate the performance of the proposed protocols in terms of computation cost, communication cost, total running time, and energy consumption. The results show the efficacy of our proposed proximity measure and better performance of our protocols over the state-of-the-art protocols.
机译:过去几年中,在线社交网络(OSN)的爆炸式增长重新定义了人们与现有朋友互动的方式,尤其是结交新朋友。有些作品建议让人们在拥有相似个人资料属性的情况下成为朋友。但是,配置文件匹配涉及固有的隐私风险,即向网络空间中的陌生人公开私有配置文件信息。该问题的现有解决方案试图通过私下计算两个用户的配置文件属性集的相交或相交基数来保护用户的隐私。这些方案有一定的局限性,仍然可以显示用户的隐私。在本文中,我们利用社区结构来重新定义OSN模型,并提出了两个用户之间切合实际的不对称社会接近度措施。然后,基于提出的非对称社会接近度,我们设计了三个私有匹配协议,它们提供了不同的隐私级别,并且可以比以前的作品更好地保护用户的隐私。我们还将分析这些协议的计算和通信成本。最后,我们使用真实的社交网络数据验证了我们提出的不对称接近度度量,并进行了广泛的仿真,以从计算成本,通信成本,总运行时间和能耗等方面评估提议协议的性能。结果显示了我们提出的接近度测量的有效性以及优于最新协议的协议的更好性能。

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