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Link prediction based on sampling in complex networks

机译:基于复杂网络中的采样的链路预测

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摘要

The link prediction problem has received extensive attention in fields such as sociology, anthropology, information science, and computer science. In many practical applications, we only need to predict the potential links between the vertices of interest, instead of predicting all of the links in a complex network. In this paper, we propose a fast similarity based approach for predicting the links related to a given node. We construct a path set connected to the given node by a random walk. The similarity score is computed within a small sub-graph formed by the path set connected to the given node, which significantly reduces the computation time. By choosing the appropriate number of sampled paths, we can restrict the error of the estimated similarities within a given threshold. Our experimental results on a number of real networks indicate that the algorithm proposed in this paper can obtain accurate results in less time than existing methods.
机译:链接预测问题在社会学,人类学,信息科学和计算机科学等领域得到了广泛的关注。 在许多实际应用中,我们只需要预测感兴趣的顶点之间的潜在链接,而不是预测复杂网络中的所有链路。 在本文中,我们提出了一种基于快速相似性的方法,用于预测与给定节点相关的链接。 我们通过随机步行构造连接到给定节点的路径集。 在由连接到给定节点的路径集形成的小子图中计算相似度分数,这显着降低了计算时间。 通过选择适当数量的采样路径,我们可以限制给定阈值内的估计相似之处的错误。 我们对许多真实网络的实验结果表明本文提出的算法可以在比现有方法更少的时间内获得准确的结果。

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