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Efficient Quantification of Profile Matching Risk in Social Networks Using Belief Propagation

机译:使用信仰传播有效地量化社交网络中的简介匹配风险

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Many individuals share their opinions (e.g., on political issues) or sensitive information about them (e.g., health status) on the internet in an anonymous way to protect their privacy. However, anonymous data sharing has been becoming more challenging in today's interconnected digital world, especially for individuals that have both anonymous and identified online activities. The most prominent example of such data sharing platforms today are online social networks (OSNs). Many individuals have multiple profiles in different OSNs, including anonymous and identified ones (depending on the nature of the OSN). Here, the privacy threat is profile matching: if an attacker links anonymous profiles of individuals to their real identities, it can obtain privacy-sensitive information which may have serious consequences, such as discrimination or blackmailing. Therefore, it is very important to quantify and show to the OSN users the extent of this privacy risk. Existing attempts to model profile matching in OSNs are inadequate and computationally inefficient for real-time risk quantification. Thus, in this work, we develop algorithms to efficiently model and quantify profile matching attacks in OSNs as a step towards real-time privacy risk quantification. For this, we model the profile matching problem using a graph and develop a belief propagation (BP)-based algorithm to solve this problem in a significantly more efficient and accurate way compared to the state-of-the-art. We evaluate the proposed framework on three real-life datasets (including data from four different social networks) and show how users' profiles in different OSNs can be matched efficiently and with high probability. We show that the proposed model generation has linear complexity in terms of number of user pairs, which is significantly more efficient than the state-of-the-art (which has cubic complexity). Furthermore, it provides comparable accuracy, precision, and recall compared to state-of-the-art. Thanks to the algorithms that are developed in this work, individuals will be more conscious when sharing data on online platforms. We anticipate that this work will also drive the technology so that new privacy-centered products can be offered by the OSNs.
机译:许多人在互联网上以匿名方式分享他们的意见(例如,关于政治问题)或有关他们(例如,健康状况)的敏感信息以保护他们的隐私。然而,匿名数据共享在今天的互联数字世界中变得更具挑战性,特别是对于具有匿名和确定的在线活动的个人。今天这些数据共享平台的最突出的示例是在线社交网络(OSN)。许多人在不同的OSN中有多个简档,包括匿名和识别的概念(取决于OSN的性质)。这里,隐私威胁是个人资料匹配:如果攻击者将个人的匿名概要链接到他们的真实身份,它可以获得隐私敏感信息,这可能具有严重后果,例如歧视或敲诈勒索。因此,量化和向OSN用户量化本隐私风险的程度非常重要。对于实时风险量化,现有尝试在OSNS中的模型匹配模型匹配的匹配不足,并且计算地效率低下。因此,在这项工作中,我们开发算法,以有效地模拟和量化奥斯纳中的匹配匹配攻击作为实时隐私风险量化的一步。为此,我们使用图形模拟了配置文件匹配问题,并开发了基于信仰传播(BP)的算法,以与最先进的方式以明显更有效和准确的方式解决此问题。我们在三个现实生活数据集(包括来自四个不同的社交网络的数据)上提出的框架(包括来自四个不同的社交网络),并显示不同OSN中的用户的简档如何有效匹配,并且具有高概率。我们表明所提出的模型生成在用户对数量方面具有线性复杂性,这比最先进的(具有立方体复杂度)的效率明显更有效。此外,与最先进的相比,它提供了可比的准确性,精度和召回。由于在这项工作中开发的算法,在在线平台上共享数据时,个人将更加有意识。我们预计这项工作也将推动该技术,以便OSNS提供新的隐私中心产品。

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