Journal of Information Resources Management ›› 2025, Vol. 15 ›› Issue (3): 122-134.doi: 10.13365/j.jirm.2025.03.122

Previous Articles     Next Articles

Theoretical Framework on Synergistic Mechanism and Extraction Strategy of Scientific and Technological Knowledge Driven by Data-Intelligence

Xiang Bo1 Yan Zhaoping1 Pan Zhuoya2 Yu Dejian3 Shi Jin1   

  1. 1.School of Information Management, Nanjing University, Nanjing, 210023; 
    2.School of Business Administration, Zhongnan University of Economics and Law, Wuhan, 430073; 
    3.School of Business, Nanjing Audit University, Nanjing, 211815
  • Online:2025-05-26 Published:2025-06-16
  • About author:Xiang Bo, Ph.D student, research interests include big data management and application, innometrics; Yan Zhaoping, Ph.D candidate, research interests include knowledge discovery, technological innovation; Pan Zhuoya, master, research interests include technological innovation, intellectual property evaluation; Yu Dejian, professor, Ph.D., Ph.D supervisor, research interests include informetrics in science and technology, decision theory; Shi Jin(corresponding author), professor, Ph.D., Ph.D supervisor, research interests include big data analysis and technology, informatics, Email: shijin@nju.edu.cn.
  • Supported by:
    This paper is one of the research outcomes of the key project funded by the National Social Science Foundation of China "Research on the formation mechanism, early warning and breakthrough countermeasures of technological lock-in under the perspective of safeguarding national scientific and technological security"(24AGL002), and the scientific and technological project funded by the National Archives Administration of China "Research on generative AI application ability system based on power grid archive data" (2024-X-025).

Abstract: It is the important issue to promote the value realization of data elements through clarifying the multiple stakeholders and multi-source heterogeneous data of scientific and technological knowledge, and their synergistic mechanism, as well as delineating the knowledge extraction paths empowered with big data and intelligent technology. Based on the process of data-to-wisdom derivation in the DIKW chain, this study constructed a synergistic framework of scientific and technological knowledge involving multiple stakeholders, such as universities, research institutes, enterprises, government and the public, covering multi-source data such as papers, patents, products, policies and user-generated content. Furthermore, this study expanded the front-end and back-end structures of scientific and technological knowledge extraction paths, and explored the knowledge extraction outcomes and their diverse service scenarios under intelligent strategy combination patterns. Driven by digital intelligence, scientific and technological knowledge has formed a bi-directional and multi-dimensional intertwined synergy pattern under the direction of multi-stakeholders to facilitate the interaction and matching of knowledge supply and demand.

Key words: Data-intelligence driven, Multi-source heterogeneous data, Multi-stakeholder, Knowledge synergy, Knowledge extraction

CLC Number: