Attention based Collaborator Recommendation in Heterogeneous Academic Networks

Xiao Ma, Qiumiao Deng, Yi Ye, Tingting Yang, Jiangfeng Zeng
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Abstract

In real academic networks, there exist multiple types of entities(authors, papers, terms, conferences) and links between them. Therefore, the academic networks are generally considered as heterogeneous information networks(HINs). Existing collabo-rator recommendation methods in heterogeneous networks are generally based on the embeddings of nodes and links with re-spect to some given meta-paths. However, they seldom learn meta-paths representations which can provide important interaction information. What's more, the impact of different meta-paths on recommendation are neglected. In order to deal with these unsolved problems, we propose an attention based collaborator recommendation method in the setting of heterogeneous academic networks. Firstly, we select some meta-paths according to the HIN schema. Secondly, the embeddings of nodes and meta-path instances are generated by employing the Skip-gram and Convolutional Neural Network(CNN) models respectively. Thirdly, the attention mechanism is devised to integrate the multiple sources of embeddings so as to produce the author representations and meta-path based context representations. Finally, the Multi-Layer Perceptron is utilized for recommendation task. Comparative experiments conducted on the DBLP dataset demonstrate the effectiveness of our proposed method.
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异构学术网络中基于注意力的合作者推荐
在真实的学术网络中,存在多种类型的实体(作者、论文、术语、会议)以及它们之间的联系。因此,学术网络通常被认为是异构信息网络(HINs)。异构网络中现有的协作者推荐方法一般是基于节点和链接相对于某些给定元路径的嵌入。然而,他们很少学习元路径表示,而元路径表示可以提供重要的交互信息。此外,不同的元路径对推荐的影响被忽略了。为了解决这些未解决的问题,我们提出了一种基于注意力的异构学术网络背景下的合作者推荐方法。首先,我们根据HIN模式选择一些元路径。其次,分别采用Skip-gram和卷积神经网络(CNN)模型生成节点和元路径实例的嵌入;第三,设计注意机制,整合多个嵌入源,生成作者表示和基于元路径的上下文表示。最后,将多层感知器用于推荐任务。在DBLP数据集上进行的对比实验证明了本文方法的有效性。
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