Journal of Information Resources Management ›› 2025, Vol. 15 ›› Issue (5): 34-50.doi: 10.13365/j.jirm.2025.05.034

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A Typical Action Integrating Intelligence and Data: Data Sensemaking in User-Generated Intelligent Search Engine Interactions

Peng Siyuan1 Wu Siying1 Ling Shang1 Li Qiao2 Wang Ping1,3   

  1. 1.School of Information Management, Wuhan University, Wuhan, 430072; 
    2.Department of Information Resources Management, Nankai Business School, Nankai University, Tianjin, 300071; 
    3.Center for Studies of Government Intelligence and Data Governance, Wuhan University, Wuhan, 430072
  • Online:2025-09-26 Published:2025-10-31
  • About author:Peng Siyuan, Ph.D. candidate, research interests include data user cognition and behavior; Wu Siying, Ph.D. candidate, research interests include data user cognition and behavior; Ling Shang, Master's candidate, research interests include data user cognition and behavior; Li Qiao, Ph.D., lecturer, research interests include data user psychology and data behavior; Wang Ping (corresponding author), Ph.D., professor, research interests include human-intelligence interaction and data governance, Email: wangping@whu.edu.cn.
  • Supported by:
    This study was supported by the Youth Program of the National Social Science Foundation of China "Research on Open Data Discovery and Reuse Behavior of Scientific Research Users in the Context of Open Science" (22CTQ040)

Abstract: Generative intelligent search engines, which integrate generative artificial intelligence technology and retrieval techniques, have the potential to support researchers in overcoming challenges during data sensemaking, but they also come with certain risks. Drawing upon sense-making theory, information behavior model, information search process model, and information search behavior model, this study preliminarily proposes the Data Search As Data sensemaking(DS-DSM) theoretical model. To explore this model, this study conducts a user experiment on the Bing Copilot platform to understand how researchers construct the meaning of data through interaction with generative intelligent search engines. The findings indicate that in the interaction scenario of generative intelligent search engines, the essence of researchers’ data search is data sensemaking. This study also identifies the stages of this process and reveals how, at each stage, researchers cognitively, affectively, and behaviorally engage with generative intelligent search engines as a bridge to overcome gaps in the data sensemaking process to complete data-centered tasks. In data-related task situations, researchers’ sensemaking begins at the formulation stage. In contrast, in research-related task situations, some researchers first go through initiation, selection, and exploration stages without clear goals. In the formulation stage, the types of gaps researchers face and the bridges they use are the most diverse, showing the most complex behavioral, cognitive, and affective responses. Based on these findings, this study proposes practical strategies for optimizing the design of generative intelligent search engines and conducting user literacy education.

Key words: Data search, Data sensemaking, Generative intelligent search engine, Artificial intelligence for research, Data-intensive science

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