中国科学院机构知识库网格
Chinese Academy of Sciences Institutional Repositories Grid
Mining Related Articles for Automatic Journal Cataloging

文献类型:期刊论文

作者Yuqing Mao1,2; Zhiyong Lu2
刊名journal of data and information science
出版日期2016-06-17
卷号1期号:2页码:45-59
关键词PubMed Journals Cluster Catalog Text mining Research evaluation
通讯作者yuqing mao (e-mail: mao.yuqing@msn.com).
中文摘要

purpose: this paper is an investigation of the effectiveness of the method of clustering biomedical journals through mining the content similarity of journal articles.
design/methodology/approach: 3,265 journals in pubmed are analyzed based on article content similarity and web usage, respectively. comparisons of the two analysis approaches and a citation-based approach are given.
findings: our results suggest that article content similarity is useful for clustering biomedical journals, and the content-similarity-based journal clustering method is more robust and less subject to human factors compared with the usage-based approach and the citation-based approach.
research limitations: our paper currently focuses on clustering journals in the biomedical domain because there are a large volume of freely available resources such as pubmed and mesh in this field. further investigation is needed to improve this approach to fit journals in other domains.
practical implications: our results show that it is feasible to catalog biomedical journals by mining the article content similarity. this work is also significant in serving practical needs in research portfolio analysis.
originality/value: to the best of our knowledge, we are among the first to report on clustering journals in the biomedical field through mining the article content similarity. this method can be integrated with existing approaches to create a new paradigm for future studies of journal clustering.

英文摘要

purpose: this paper is an investigation of the effectiveness of the method of clustering biomedical journals through mining the content similarity of journal articles.
design/methodology/approach: 3,265 journals in pubmed are analyzed based on article content similarity and web usage, respectively. comparisons of the two analysis approaches and a citation-based approach are given.
findings: our results suggest that article content similarity is useful for clustering biomedical journals, and the content-similarity-based journal clustering method is more robust and less subject to human factors compared with the usage-based approach and the citation-based approach.
research limitations: our paper currently focuses on clustering journals in the biomedical domain because there are a large volume of freely available resources such as pubmed and mesh in this field. further investigation is needed to improve this approach to fit journals in other domains.
practical implications: our results show that it is feasible to catalog biomedical journals by mining the article content similarity. this work is also significant in serving practical needs in research portfolio analysis.
originality/value: to the best of our knowledge, we are among the first to report on clustering journals in the biomedical field through mining the article content similarity. this method can be integrated with existing approaches to create a new paradigm for future studies of journal clustering.

学科主题新闻学与传播学 ; 图书馆、情报与文献学
收录类别其他
原文出处http://www.chinalibraries.net
语种英语
源URL[http://ir.las.ac.cn/handle/12502/8597]  
专题文献情报中心_Journal of Data and Information Science_Journal of Data and Information Science-2016
作者单位1.School of Information Technology, Nanjing University of Chinese Medicine, Nanjing 210023, China
2.National Center for Biotechnology Information, National Library of Medicine, MD 20894, USA
推荐引用方式
GB/T 7714
Yuqing Mao,Zhiyong Lu. Mining Related Articles for Automatic Journal Cataloging[J]. journal of data and information science,2016,1(2):45-59.
APA Yuqing Mao,&Zhiyong Lu.(2016).Mining Related Articles for Automatic Journal Cataloging.journal of data and information science,1(2),45-59.
MLA Yuqing Mao,et al."Mining Related Articles for Automatic Journal Cataloging".journal of data and information science 1.2(2016):45-59.

入库方式: OAI收割

来源:文献情报中心

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