Classifying the ideational impact of Information Systems review articles: A content-enriched deep learning approach
作者:
Highlights:
• Conceptualize ideational impact as the uptake of a paper's ideas and concepts by subsequent research
• Develop automated citation content analysis model based on natural language processing and deep learning techniques
• Classify ideational impact utilizing meta-data and content-based features
• Investigate the ideational impact of IT business value review articles
摘要
Ideational impact refers to the uptake of a paper's ideas and concepts by subsequent research. It is defined in stark contrast to total citation impact, a measure predominantly used in research evaluation that assumes that all citations are equal. Understanding ideational impact is critical for evaluating research impact and understanding how scientific disciplines build a cumulative tradition. Research has only recently developed automated citation classification techniques to distinguish between different types of citations and generally does not emphasize the conceptual content of the citations and its ideational impact. To address this problem, we develop Deep Content-enriched Ideational Impact Classification (Deep-CENIC) as the first automated approach for ideational impact classification to support researchers' literature search practices. We evaluate Deep-CENIC on 1256 papers citing 24 information systems review articles from the IT business value domain. We show that Deep-CENIC significantly outperforms state-of-the-art benchmark models. We contribute to information systems research by operationalizing the concept of ideational impact, designing a recommender system for academic papers based on deep learning techniques, and empirically exploring the ideational impact in the IT business value domain.
论文关键词:Ideational impact,Citation classification,Academic recommender systems,Natural language processing,Deep learning,Cumulative tradition
论文评审过程:Received 18 March 2020, Revised 21 October 2020, Accepted 24 October 2020, Available online 4 November 2020, Version of Record 30 November 2020.
论文官网地址:https://doi.org/10.1016/j.dss.2020.113432