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On relationship formation in heterogeneous information networks: An inferring method based on multilabel learning

机译:论异构信息网络中的关系形成:基于多标签学习的推断方法

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This paper studies how relationships form in heterogeneous information networks (HINs). The objective is not only to predict relationships in a given HIN more accurately but also to discover the interdependency between different type of relationships. A new relationship prediction method MULRP based on multilabel learning (MLL in brief) is proposed. In MULRP, the types of relationship between two nodes are represented by the meta‐paths between nodes and each type of relationship is given a label. Under the framework of MLL, any potential relationships including the target relationship can be predicted. Moreover, the method can output the reasonable dependency scores between relationships. Thus, more viable paths will be provided to facilitate the formation of new relationships. The proposed method is evaluated on two real datasets: The DBLP Computer Science Bibliography(abbr. DBLP) network and Twitter network. The experimental results show that by using heterogeneous information in a supervised MLL setting, MULRP achieves better performance in comparison to several baseline binary classification methods and a state‐of‐art relationship prediction method.
机译:本文研究了如何在异构信息网络(HUN)中的关系。该目标不仅可以更准确地预测给定HIN的关系,而且还可以发现不同类型的关系之间的相互依赖性。提出了一种基于多标签学习的新关系预测方法MULRP(简要介绍了MLL。在MULRP中,两个节点之间的关系类型由节点之间的元路径表示,并且给出了每个类型的关系。在MLL的框架下,可以预测包括目标关系的任何潜在关系。此外,该方法可以在关系之间输出合理的依赖性分数。因此,将提供更加可行的路径以便于形成新的关系。所提出的方法是在两个真实数据集中评估:DBLP计算机科学参考书目(ABBRP)网络和Twitter网络。实验结果表明,通过使用监督MLL设置中的异构信息,与几种基线二进制分类方法和最先进的关系预测方法相比,MULRP实现了更好的性能。

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