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Utilizing adjacency of colleagues and type correlations for enhanced link prediction

机译:利用同事的邻接和类型相关性来增强链接预测

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Discoveries of new relationships in the network of objects have been required in various applications such as social networks, DBLP bibliographic networks and biological networks. Specifically, link prediction in heterogeneous information networks (HINs) that consist of multiple types of nodes and links has received much attention recently because many information networks of the real world are HINs. We observe various factors that affect the existence of a link in HINs. Firstly, certain structural characteristics of nodes whose types are the same as that of a source (or target) node give important information for link prediction. Secondly, in the HINs, there can be meaningful correlation between links of a particular link type and paths of a particular path type (also called a meta-path). In other words, paths of different path types affect the existence of links differently. Finally, we use the number of paths between source and target nodes to measure proximity of two nodes. Based on these observations, we newly propose several features and a prediction model. We show through various experiments that our proposed method works effectively and performs better than the other existing methods.
机译:在诸如社交网络,DBLP书目网络和生物网络的各种应用中,需要发现对象网络中的新关系。具体而言,由于现实世界中的许多信息网络都是HIN,因此由多种类型的节点和链接组成的异构信息网络(HIN)中的链接预测最近受到了广泛关注。我们观察到影响HIN中链接存在的各种因素。首先,类型与源(或目标)节点类型相同的节点的某些结构特征为链接预测提供重要信息。其次,在HIN中,特定链接类型的链接与特定路径类型的路径(也称为元路径)之间可能存在有意义的关联。换句话说,不同路径类型的路径对链接的存在有不同的影响。最后,我们使用源节点和目标节点之间的路径数来测量两个节点的接近度。基于这些观察,我们新提出了几个功能和一个预测模型。通过各种实验,我们证明了我们提出的方法有效地工作,并且比其他现有方法具有更好的性能。

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