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Explore semantic topics and author communities for citation recommendation in bipartite bibliographic network

机译:在二部书目网络中探索语义主题和作者社区以进行引文推荐

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摘要

Citation recommendation is the task of suggesting a list of references for an author given a manuscript. This is important for academic research for it provides an efficient and easy way to find relevant literatures. In this paper, we propose a novel probabilistic topic model to automatically recommend citations for researchers. The model considers not only text content similarity between papers but also community relevance among authors for effective citation recommendation. To fully utilize content and diversified link information in a bibliographic network, we extend LDA with matrix factorization, so that semantic topic learning and community detection are essentially reinforcing each other during parameter estimation. We also develop a flexible way to generate a family of citation link probability functions, which can substantially increase the model capacity. Experimental results on the ANN and DBLP dataset show that our model outperforms baseline algorithms for citation recommendation, and is capable of generating qualified author communities and topics.
机译:引文推荐是为给定稿件的作者提供参考文献列表的任务。这对于学术研究很重要,因为它提供了一种有效且简便的方法来查找相关文献。在本文中,我们提出了一种新颖的概率主题模型,可自动为研究人员推荐引文。该模型不仅考虑了论文之间的文本内容相似性,还考虑了作者之间对于有效引用建议的社区相关性。为了在书目网络中充分利用内容和多样化的链接信息,我们对LDA进行了矩阵分解,从而使语义主题学习和社区检测在参数估计过程中实质上相互补充。我们还开发了一种灵活的方法来生成一系列引文链接概率函数,这可以大大增加模型的容量。在ANN和DBLP数据集上的实验结果表明,我们的模型优于引文推荐的基线算法,并且能够生成合格的作者社区和主题。

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