Knowledge Network Node

Knowledge-based and Data-driven Integrating Methodologies for Collective Intelligence Decision Making: A SurveyChinese Full TextEnglish Full Text (MT)

PU Zhi-Qiang;YI Jian-Qiang;LIU Zhen;QIU Teng-Hai;SUN Jin-Lin;LI Fei-Mo;Integrated Information System Research Center, Institute of Automation, Chinese Academy of Sciences;School of Artificial Intelligence, University of Chinese Academy of Sciences;Taizhou Institute of Intelligent Manufacturing;School of Electrical and Information Engineering, Jiangsu University;

Abstract: Collective intelligence(CI) shows promising application prospects. Current research methodologies of intelligent decision making for CI systems can be categorized as knowledge-based and data-driven methods, both showing inherent advantages and disadvantages. Therefore, we claim that integrating knowledge-based and datadriven paradigms offers a new and prospective research direction. In this paper, possible methods of this integration are systematically introduced, and all of these methods are classified into a framework level and an algorithm level.Specifically, the methods integrated in the algorithm level are further categorized as hierarchical and componentized methods. In the hierarchical taxonomy, neural network tree, genetic fuzzy tree, and hierarchical reinforcement learning are included. In the componentized taxonomy, knowledge enhanced data-driven, data optimized knowledgedriven, and complementary knowledge and data driven methods are introduced. Finally, several future research priorities on the knowledge-based and data-driven integrating paradigms are proposed for the considerations of theoretical development and application requirement.
  • DOI:

    10.16383/j.aas.c210118

  • Series:

    (I) Electronic Technology & Information Science; (A) Mathematics/ Physics/ Mechanics/ Astronomy

  • Subject:

    Mathematics

  • Classification Code:

    O225

Download the mobile appuse the app to scan this coderead the article.

Tips: Please download CAJViewer to view CAJ format full text.

Download: 5084 Page: 627-643 Pagecount: 17 Size: 1146K

Related Literature
  • Similar Article
  • Reader Recommendation
  • Associated Author