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Scientometrics

, Volume 115, Issue 2, pp 849–868 | Cite as

An integrated method for interdisciplinary topic identification and prediction: a case study on information science and library science

  • Kun Dong
  • Haiyun Xu
  • Rui Luo
  • Ling Wei
  • Shu Fang
Article
  • 434 Downloads

Abstract

Given that many frontiers and hotspots of science and technology are emerging from interdisciplines, the accurate identification and forecasting of interdisciplinary topics has become increasingly significant. Existing methods of interdisciplinary topic identification have their respective application fields, and each identification result can help researchers acquire partial characteristics of interdisciplinary topics. This paper offers an integrated method for identifying and predicting interdisciplinary topics from scientific literature. It integrates various methods, including co-occurrence networks analysis, high-TI terms analysis and burst detection, and offers an overall perspective into interdisciplinary topic identification. The results of the different methods are mutually confirmed and complemented, further overviewing the characteristics of the interdisciplinary field and highlighting the importance or potential of interdisciplinary topics. In this study, Information Science and Library Science is selected as a case study. The research has clearly shown that more accurate and comprehensive results can be achieved for interdisciplinary topic identification and prediction by employing this integrated method. Further, the integration of different methods has promising potential for application in knowledge discovery and scientific measurement in the future.

Keywords

Interdisciplinary topic Topic identification Integrated method Information science and library science 

Notes

Acknowledgements

This study was supported by the National Natural Science Foundation of China (Grant No. 71704170), the China Postdoctoral Science Foundation funded Project (2016M590124), the Youth Innovation Fund of Promotion Association, CAS (2016159) and Informationization Initiative of Chinese Academy of Sciences (XXH13506-203).

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Copyright information

© Akadémiai Kiadó, Budapest, Hungary 2018

Authors and Affiliations

  1. 1.Chengdu Documentation and Information CenterChinese Academy of SciencesChengduChina
  2. 2.University of Chinese Academy of SciencesBeijingChina

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