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Link prediction in weighted networks via structural perturbations

机译:通过结构扰动在加权网络中进行链接预测

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Link prediction aims at revealing missing and unknown information from observed network data, or predicting possible evolutions in near future. In recent years, extensive studies of link prediction algorithms have been performed on unweighted networks. However most empirical systems are necessarily to be described as weighted networks rather than solely the topology. In this paper we extend the structural perturbation method to weighted networks. We found that by including weight information the prediction accuracy can be significantly improved on networks with homogeneous weight distributions, meanwhile less improvements for heterogeneous weighted networks. Also we compared the weighted structural perturbation method to some benchmark algorithms, both weighted and unweighted, and found generally better performance in accuracy.
机译:链接预测的目的是从观察到的网络数据中揭示丢失和未知的信息,或预测不久的将来可能发生的变化。近年来,已经在非加权网络上进行了链路预测算法的广泛研究。但是,大多数经验系统必须被描述为加权网络,而不仅仅是拓扑。在本文中,我们将结构摄动方法扩展到加权网络。我们发现,通过包含权重信息,可以在权重分布均匀的网络上显着提高预测准确性,而对于异构加权网络,则预测的改进较少。此外,我们将加权结构摄动法与一些基准算法进行了比较,无论是加权算法还是未加权算法,都发现总体上在精度方面具有更好的性能。

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