Full-text based context-rich heterogeneous network mining approach for citation recommendation

Xiaozhong Liu, Yingying Yu, Chun Guo, Yizhou Sun, Liangcai Gao
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引用次数: 56

Abstract

Citation relationship between scientific publications has been successfully used for scholarly bibliometrics, information retrieval and data mining tasks, and citation-based recommendation algorithms are well documented. While previous studies investigated citation relations from various viewpoints, most of them share the same assumption that, if paper1 cites paper2 (or author1 cites author2), they are connected, regardless of citation importance, sentiment, reason, topic, or motivation. However, this assumption is oversimplified. In this study, we employ an innovative “context-rich heterogeneous network” approach, which paves a new way for citation recommendation task. In the network, we characterize (1) the importance of citation relationships between citing and cited papers, and (2) the topical citation motivation. Unlike earlier studies, the citation information, in this paper, is characterized by citation textual contexts extracted from the full-text citing paper. We also propose algorithm to cope with the situation when large portion of full-text missing information exists in the bibliographic repository. Evaluation results show that, context-rich heterogeneous network can significantly enhance the citation recommendation performance.
基于全文上下文的异构网络引文推荐方法
科学出版物之间的引文关系已经成功地用于学术文献计量学、信息检索和数据挖掘任务,基于引文的推荐算法也有很好的文献记录。虽然以往的研究从不同的角度考察了引文关系,但大多数研究都有一个共同的假设,即如果paper1引用了paper2(或author1引用了author2),那么它们之间是有联系的,无论引用的重要性、观点、原因、主题或动机如何。然而,这种假设过于简化了。在本研究中,我们采用了一种创新的“富上下文异构网络”方法,为引文推荐任务开辟了一条新的道路。在网络中,我们描述了(1)被引论文和被引论文之间引用关系的重要性,以及(2)主题引用动机。与以往的研究不同,本文的引文信息的特征是从全文引文论文中提取的引文文本语境。针对文献库中存在大量全文缺失信息的情况,提出了相应的算法。评价结果表明,上下文丰富的异构网络能够显著提高引文推荐性能。
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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