【2h】

Private algorithms for the protected in social network search

机译:社交网络搜索中受保护的专用算法

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摘要

Motivated by tensions between data privacy for individual citizens and societal priorities such as counterterrorism and the containment of infectious disease, we introduce a computational model that distinguishes between parties for whom privacy is explicitly protected, and those for whom it is not (the targeted subpopulation). The goal is the development of algorithms that can effectively identify and take action upon members of the targeted subpopulation in a way that minimally compromises the privacy of the protected, while simultaneously limiting the expense of distinguishing members of the two groups via costly mechanisms such as surveillance, background checks, or medical testing. Within this framework, we provide provably privacy-preserving algorithms for targeted search in social networks. These algorithms are natural variants of common graph search methods, and ensure privacy for the protected by the careful injection of noise in the prioritization of potential targets. We validate the utility of our algorithms with extensive computational experiments on two large-scale social network datasets.
机译:出于个人公民的数据隐私与社会优先事项(例如反恐和传染病控制)之间的紧张关系的驱使,我们引入了一种计算模型,该模型区分了受到显式保护的当事人与未受到显式保护的当事人(目标人群) 。目标是开发算法,该算法可以以最小程度地损害被保护者的隐私的方式有效地识别目标人群的成员并对其采取行动,同时通过诸如监视之类的昂贵机制来限制区分两组成员的开销,背景检查或医学测试。在此框架内,我们提供了可证明的隐私保护算法,用于社交网络中的目标搜索。这些算法是常见图搜索方法的自然变体,并通过在潜在目标的优先级中仔细注入噪声来确保受保护者的隐私。我们在两个大型社交网络数据集上进行了广泛的计算实验,验证了我们算法的实用性。

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