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Newton's Gravitational Law for Link Prediction in Social Networks

机译:牛顿引力定律在社交网络中的链接预测

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Link prediction is an important research area in network science due to a wide range of real-world application. There are a number of link prediction methods. In the area of social networks, these methods are mostly inspired by social theory, such as having more mutual friends between two people in a social network platform entails higher probability of those two people becoming friends in the future. In this paper we take our inspiration from a different area, which is Newton's law of universal gravitation. Although this law deals with physical bodies, based on our intuition and empirical results we found that this could also work in networks, and especially in social networks. In order to apply this law, we had to endow nodes with the notion of mass and distance. While node importance could be considered as mass, the shortest path, path count, or inverse similarity (AdamicAdar, Katz score etc.) could be considered as distance. In our analysis, we have primarily used degree centrality to denote the mass of the nodes, while the lengths of shortest paths between them have been used as distances. In this study we compare the proposed link prediction approach to 7 other methods on 4 datasets from various domains. To this end, we use the ROC curves and the AUC measure to compare the methods. As the results show that our approach outperforms the other 7 methods on 2 out of the 4 datasets, we also discuss the potential reasons of the observed behaviour.
机译:由于实际应用范围广泛,链路预测是网络科学中的重要研究领域。有许多链接预测方法。在社交网络领域,这些方法主要是受社会理论启发的,例如,在社交网络平台中两个人之间有更多的共同朋友会导致这两个人将来成为朋友的可能性更高。在本文中,我们从牛顿的万有引力定律的不同领域中汲取了灵感。尽管该定律涉及身体,但是根据我们的直觉和经验结果,我们发现这也可以在网络中,特别是在社会网络中起作用。为了应用该定律,我们必须赋予节点质量和距离的概念。虽然可以将节点重要性视为质量,但可以将最短路径,路径数或逆相似性(AdamicAdar,Katz得分等)视为距离。在我们的分析中,我们主要使用度中心来表示节点的质量,而它们之间的最短路径的长度已用作距离。在这项研究中,我们将提议的链接预测方法与来自不同领域的4个数据集上的其他7种方法进行了比较。为此,我们使用ROC曲线和AUC量度来比较这些方法。结果表明,在4个数据集中的2个数据集上,我们的方法优于其他7个方法,我们还讨论了观察到的行为的潜在原因。

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