Graph Neural Collaborative Topic Model for Citation Recommendation

Qianqian Xie, Yutao Zhu, Jimin Huang, Pan Du, J. Nie
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引用次数: 17

Abstract

Due to the overload of published scientific articles, citation recommendation has long been a critical research problem for automatically recommending the most relevant citations of given articles. Relational topic models (RTMs) have shown promise on citation prediction via joint modeling of document contents and citations. However, existing RTMs can only capture pairwise or direct (first-order) citation relationships among documents. The indirect (high-order) citation links have been explored in graph neural network–based methods, but these methods suffer from the well-known explainability problem. In this article, we propose a model called Graph Neural Collaborative Topic Model that takes advantage of both relational topic models and graph neural networks to capture high-order citation relationships and to have higher explainability due to the latent topic semantic structure. Experiments on three real-world citation datasets show that our model outperforms several competitive baseline methods on citation recommendation. In addition, we show that our approach can learn better topics than the existing approaches. The recommendation results can be well explained by the underlying topics.
引文推荐的图神经协同主题模型
由于已发表的科学论文数量过多,引文推荐一直是一个关键的研究问题,如何自动推荐给定文章中最相关的引文。关系主题模型(RTMs)通过对文献内容和引文进行联合建模,在引文预测方面显示出良好的前景。然而,现有的rtm只能捕获文档之间的成对或直接(一阶)引用关系。基于图神经网络的方法已经对间接(高阶)引文链接进行了探索,但这些方法存在着众所周知的可解释性问题。在本文中,我们提出了一个称为图神经协作主题模型的模型,该模型利用关系主题模型和图神经网络来捕获高阶引用关系,并且由于潜在的主题语义结构而具有更高的可解释性。在三个真实引文数据集上的实验表明,我们的模型在引文推荐方面优于几种有竞争力的基线方法。此外,我们证明了我们的方法可以比现有的方法更好地学习主题。推荐结果可以通过潜在的主题得到很好的解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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