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An efficient reconciliation algorithm for social networks

机译:一种高效的社交网络调衡算法

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People today typically use multiple online social networks (Facebook, Twitter, Google+, LinkedIn, etc.). Each online network represents a subset of their "real" ego-networks. An interesting and challenging problem is to reconcile these online networks, that is, to identify all the accounts belonging to the same individual. Besides providing a richer understanding of social dynamics, the problem has a number of practical applications. At first sight, this problem appears algorithmically challenging. Fortunately, a small fraction of individuals explicitly link their accounts across multiple networks; our work leverages these connections to identify a very large fraction of the network. Our main contributions are to mathematically formalize the problem for the first time, and to design a simple, local, and efficient parallel algorithm to solve it. We are able to prove strong theoretical guarantees on the algorithm's performance on well-established network models (Random Graphs, Preferential Attachment). We also experimentally confirm the effectiveness of the algorithm on synthetic and real social network data sets.
机译:今天人们通常使用多个在线社交网络(Facebook,Twitter,Google+,LinkedIn等)。每个在线网络代表其“真实”自我网络的子集。一个有趣和挑战性的问题是协调这些在线网络,即确定属于同一个人的所有账户。除了提供对社会动态的浓烈了解外,问题还具有许多实际应用。乍一看,这个问题出现了算法具有挑战性。幸运的是,一小部分的个人明确地将他们的帐户与多个网络进行了联系起来;我们的工作利用这些连接来识别网络的非常大的一部分。我们主要贡献是在数学上首次正式化问题,并设计一个简单,本地和有效的并行算法来解决它。我们能够证明对算法在既定网络模型上的算法性能(随机图,优惠附件)上的强烈理论保证。我们还通过实验证实了算法对合成和真实社交网络数据集的有效性。

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