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首页> 外文期刊>Journal of Parallel and Distributed Computing >Bayesian inference of private social network links using prior information and propagated data
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Bayesian inference of private social network links using prior information and propagated data

机译:使用先验信息和传播数据的私人社交网络链接的贝叶斯推断

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摘要

Inferring network structure has many applications ranging from viral marketing to privacy forensics, infection prevention and information feed ranking. In complex or social networks some agents or users tend to keep their connections hidden. The main focus of this research is inferring hidden and invisible network connections through the data collected from propagations or cascades with the help of some other rich information e.g. comments, profile information, joint photos or interactions of users. We analyze the information propagation mechanism based on a two-phase algorithm. Traversing the first phase relies on using the social network data set in order to estimate the friendship probability among its users. Performing this procedure would result in generating a primitive friendship graph which includes the probability of every two users being effectively connected. The propagation times of one or more cascades are fed into a Maximum A Posteriori (MAP) estimator to find the active hidden links using a Bayesian inference method. The algorithm was evaluated on a real network graph extracted from part of Facebook. Mutual friendships were used as the prior information for test purposes. The results showed that it is possible to achieve very high accuracy with limited cascades if the ratio of the nodes with hidden friends is not high. (C) 2018 Elsevier Inc. All rights reserved.
机译:推断网络结构具有许多应用,从病毒式营销到隐私取证,感染预防和信息提要排名。在复杂或社交网络中,某些代理或用户倾向于隐藏其连接。这项研究的主要重点是借助其他一些丰富的信息,例如通过传播或级联收集的数据,推断隐藏和不可见的网络连接。评论,个人资料信息,联合照片或用户互动。我们分析了基于两阶段算法的信息传播机制。遍历第一阶段依赖于使用社交网络数据集来估计其用户之间的友谊概率。执行此过程将导致生成原始友谊图,其中包括每两个用户被有效连接的概率。使用贝叶斯推断方法,将一个或多个级联的传播时间输入到最大后验(MAP)估计器中,以找到活动的隐藏链接。该算法在从Facebook部分提取的真实网络图上进行了评估。相互友谊被用作测试目的的先验信息。结果表明,如果具有隐藏好友的节点的比例不高,则可以在有限的级联中实现非常高的精度。 (C)2018 Elsevier Inc.保留所有权利。

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