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A Survey of Link Prediction in Complex Networks

机译:复杂网络中的链路预测研究

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Networks have become increasingly important to model complex systems composed of interacting elements. Network data mining has a large number of applications in many disciplines including protein-protein interaction networks, social networks, transportation networks, and telecommunication networks. Different empirical studies have shown that it is possible to predict new relationships between elements attending to the topology of the network and the properties of its elements. The problem of predicting new relationships in networks is called link prediction. Link prediction aims to infer the behavior of the network link formation process by predicting missed or future relationships based on currently observed connections. It has become an attractive area of study since it allows us to predict how networks will evolve. In this survey, we will review the general-purpose techniques at the heart of the link prediction problem, which can be complemented by domain-specific heuristic methods in practice.
机译:网络对于建模由交互元素组成的复杂系统变得越来越重要。网络数据挖掘在许多领域中都有大量应用,包括蛋白质-蛋白质相互作用网络,社交网络,运输网络和电信网络。不同的经验研究表明,可以预测参与网络拓扑的元素与其元素的属性之间的新关系。预测网络中新关系的问题称为链接预测。链接预测旨在通过根据当前观察到的连接预测丢失或将来的关系来推断网络链接形成过程的行为。因为它使我们能够预测网络将如何发展,它已成为一个有吸引力的研究领域。在本次调查中,我们将对链接预测问题的核心内容进行综述,并在实践中对特定领域的启发式方法进行补充。

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