DocumentCode
168349
Title
Full-text based context-rich heterogeneous network mining approach for citation recommendation
Author
Xiaozhong Liu ; Yingying Yu ; Chun Guo ; Yizhou Sun ; Liangcai Gao
Author_Institution
Sch. of Inf. & Comput., Indiana Univ., Bloomington, IN, USA
fYear
2014
fDate
8-12 Sept. 2014
Firstpage
361
Lastpage
370
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.
Keywords
citation analysis; data mining; full-text databases; information retrieval; recommender systems; bibliographic repository; citation recommendation performance enhancement; citation relationship; citation textual context extraction; citation-based recommendation algorithms; context-rich heterogeneous network approach; full-text based context-rich heterogeneous network mining approach; full-text citing paper; full-text missing information; scientific publications; topical citation motivation; Abstracts; Citation analysis; Context; Data mining; Educational institutions; Focusing; Inference algorithms; Citation Recommendation; Full-text Citation Analysis; Heterogeneous Information Network; Meta-Path;
fLanguage
English
Publisher
ieee
Conference_Titel
Digital Libraries (JCDL), 2014 IEEE/ACM Joint Conference on
Conference_Location
London
Type
conf
DOI
10.1109/JCDL.2014.6970191
Filename
6970191
Link To Document