Identification of topic evolution: network analytics with piecewise linear representation and word embedding

Lu Huang, Xiang Chen*, Yi Zhang, Changtian Wang, Xiaoli Cao, Jiarun Liu

*此作品的通讯作者

    科研成果: 期刊稿件文章同行评审

    16 引用 (Scopus)
    Plum Print visual indicator of research metrics
    • Citations
      • Citation Indexes: 16
    • Captures
      • Readers: 29
    see details

    摘要

    Understanding the evolutionary relationships among scientific topics and learning the evolutionary process of innovations is a crucial issue for strategic decision makers in governments, firms and funding agencies when they carry out forward-looking research activities. However, traditional co-word network analysis on topic identification cannot effectively excavate semantic relationship from the context, and fixed time window method cannot scientifically reflect the evolution process of topics. This study proposes a framework of identifying topic evolutionary pathways based on network analytics: Firstly, keyword networks are constructed, in which a piecewise linear representation method is used for dividing time periods and a Word2Vec mode is used for capturing semantics from the context of titles and abstracts; Secondly, a community detection algorithm is used to identify topics in networks; Finally, evolutionary relationships between topics are represented by measuring the topic similarity between adjacent time periods, and then topic evolutionary pathways are identified and visualized. An empirical study on information science demonstrates the reliability of the methodology, with subsequent empirical validations.

    源语言英语
    页(从-至)5353-5383
    页数31
    期刊Scientometrics
    127
    9
    DOI
    出版状态已出版 - 9月 2022

    指纹

    探究 'Identification of topic evolution: network analytics with piecewise linear representation and word embedding' 的科研主题。它们共同构成独一无二的指纹。

    引用此

    Huang, L., Chen, X., Zhang, Y., Wang, C., Cao, X., & Liu, J. (2022). Identification of topic evolution: network analytics with piecewise linear representation and word embedding. Scientometrics, 127(9), 5353-5383. https://doi.org/10.1007/s11192-022-04273-1