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A Privacy-Enhanced Friending Approach for Users on Multiple Online Social Networks

机译:多个在线社交网络上的用户的一种增强隐私的友谊方法

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Online social network users share their information in different social sites to establish connections with individuals with whom they want to be a friend. While users share all their information to connect to other individuals, they need to hide the information that can bring about privacy risks for them. As user participation in social networking sites rises, the possibility of sharing information with unknown users increases, and the probability of privacy breaches for the user mounts. This work addresses the challenges of sharing information in a safe manner with unknown individuals. Currently, there are a number of available methods for preserving privacy in order to friending (the act of adding someone as a friend), but they only consider a single source of data and are more focused on users’ security rather than privacy. Consequently, a privacy-preserving friending mechanism should be considered for information shared in multiple online social network sites. In this paper, we propose a new privacy-preserving friending method that helps users decide what to share with other individuals with the reduced risk of being exploited or re-identified. In this regard, the first step is to calculate the sensitivity score for individuals using Bernstein’s polynomial theorem to understand what sort of information can influence a user’s privacy. Next, a new model is applied to anonymise the data of users who participate in multiple social networks. Anonymisation helps to understand to what extent a piece of information can be shared, which allows information sharing with reduced risks in privacy. Evaluation indicates that measuring the sensitivity of information besides anonymisation provides a more accurate outcome for the purpose of friending, in a computationally efficient manner.
机译:在线社交网络用户在不同的社交网站上共享他们的信息,以与想要成为朋友的个人建立联系。用户共享所有信息以与其他人建立联系时,他们需要隐藏可能给他们带来隐私风险的信息。随着用户对社交网站参与程度的提高,与未知用户共享信息的可能性也随之增加,并且用户隐私受到侵犯的可能性也在增加。这项工作解决了与陌生人安全共享信息的挑战。当前,有很多可用的方法来保护隐私以结识朋友(将某人添加为朋友的行为),但是它们仅考虑单一数据源,并且更加关注用户的安全性而不是隐私。因此,对于在多个在线社交网站上共享的信息,应考虑使用隐私保护的友善机制。在本文中,我们提出了一种新的保护隐私的友谊方法,该方法可以帮助用户确定与其他人共享的内容,从而减少被剥削或重新识别的风险。在这方面,第一步是使用伯恩斯坦的多项式定理计算个人的敏感度得分,以了解哪种信息会影响用户的隐私。接下来,应用新模型来匿名参与多个社交网络的用户的数据。匿名化有助于了解可以共享信息的程度,从而可以在减少隐私风险的情况下共享信息。评估表明,除了匿名化之外,测量信息的敏感性还可以以计算有效的方式提供更准确的结果,以实现友好的目的。

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