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Predicting links in ego-networks using temporal information

机译:使用时间信息预测EGO-Network中的链接

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Link prediction appears as a central problem of network science, as it calls for unfolding the mechanisms that govern the micro-dynamics of the network. In this work, we are interested in ego-networks, that is the mere information of interactions of a node to its neighbors, in the context of social relationships. As the structural information is very poor, we rely on another source of information to predict links among egos’ neighbors: the timing of interactions. We define several features to capture different kinds of temporal information and apply machine learning methods to combine these various features and improve the quality of the prediction. We demonstrate the efficiency of this temporal approach on a cellphone interaction dataset, pointing out features which prove themselves to perform well in this context, in particular the temporal profile of interactions and elapsed time between contacts.
机译:链路预测显示为网络科学的核心问题,因为它呼吁展开管理网络的微动力学的机制。在这项工作中,我们对自我网络感兴趣,即在社交​​关系的背景下仅仅是节点对其邻居的互动的信息。由于结构信息非常差,我们依靠另一个信息来源来预测EGOS邻居之间的链接:交互的时序。我们定义了多种功能来捕获不同类型的时间信息,并应用机器学习方法,以组合这些各种特征并提高预测的质量。我们展示了这种时间方法在手机交互数据集上的效率,指出了在这种情况下证明自己在这种情况下表现良好的特征,特别是触点之间的相互作用的时间轮廓和经过的时间。

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