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Modeling the Risk amp;amp; Utility of Information Sharing in Social Networks

机译:建模风险& amp; 社交网络中信息共享的效用

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With the widespread of social networks, the risk of information sharing has become inevitable. Sharing a user's particular information in social networks is an all-or-none decision. Users receiving friendship invitations from others may decide to accept this request and share their information or reject it in which case none of their information will be shared. Access control in social networks is a challenging topic. Social network users would want to determine the optimum level of details at which they share their personal information with other users based on the risk associated with the process. In this paper, we formulate the problem of data sharing in social networks using two different models: (i) a model based on emph{diffusion kernels}, and (ii) a model based on access control. We show that it is hard to apply the former in practice and explore the latter. We prove that determining the optimal levels of information sharing is an NP-hard problem and propose an approximation algorithm that determines to what extent social network users share their own information. We propose a trust-based model to assess the risk of sharing sensitive information and use it in the proposed algorithm. Moreover, we prove that the algorithm could be solved in polynomial time. Our results rely heavily on adopting the super modularity property of the risk function, which allows us to employ techniques from convex optimization. To evaluate our model, we conduct a user study to collect demographic information of several social networks users and get their perceptions on risk and trust. In addition, through experimental studies on synthetic data, we compare our proposed algorithm with the optimal algorithm both in terms of risk and time. We show that the proposed algorithm is scalable and that the sacrifice in risk is outweighed by the gain in efficiency.
机译:随着社交网络的广泛,信息共享的风险已经不可避免。共享用户在社交网络中的特定信息是全部或无决定。用户接收来自其他人的友谊邀请可能决定接受此请求并分享他们的信息或拒绝其信息,在这种情况下,他们的信息都没有共享。社交网络中的访问控制是一个具有挑战性的话题。社交网络用户希望根据与该过程相关的风险确定与其他用户共享他们的个人信息的最佳细节水平。在本文中,我们使用两种不同的模型制定社交网络中的数据共享问题:(i)基于EMPH {Dimplive Kernels}的模型,以及(ii)基于访问控制的模型。我们表明,难以在实践中申请前者并探索后者。我们证明确定最佳信息共享水平是NP难题,并提出了一种近似算法,其确定社交网络用户在多大程度上共享自己的信息。我们提出了一种基于信任的模型,以评估共享敏感信息并以所提出的算法使用它的风险。此外,我们证明了该算法可以在多项式时间中解决。我们的结果严重依赖于风险功能的超级模块化特性,这使我们能够采用来自凸优化的技术。为了评估我们的模型,我们开展用户学习,以收集几个社交网络用户的人口统计信息,并在风险和信任中获得感知。此外,通过对合成数据的实验研究,我们将所提出的算法与风险和时间的最佳算法进行比较。我们表明所提出的算法可扩展,风险的牺牲是效率的增益超过的。

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