Learning Analytics Research: Using Meta-Review to Inform Meta-Synthesis Authors

Xu Du, Juan Yang, Mingyan Zhang, Jui-Long Hung, Brett E. Shelton

Research output: Chapter in Book/Report/Conference proceedingChapter

Abstract

Research in learning analytics is proliferating as scholars continue to find better and more engaging ways to consider how data can help inform evidence-based decisions for learning and learning environments. With well over a thousand articles published in journals and conferences with respect to learning analytics, only a handful or articles exist that attempt to synthesize the research. Further, a meta-review of those articles reveals a lack of consistency in the scope of included studies, the confluence of educational data mining activities and “big data” as a parameter for inclusion, and the reporting of actual strategies and analytic methods used by the included studies. To fill these gaps within existing reviews of learning analytics research, this metasynthesis follows procedures outlined by Cooper to reveal developments of learning analytics research. The results include a number of metrics showing trends and types of learning analytic studies through 2017 that include which fields are publishing and to what extent, what methods and strategies are employed by these studies, and what domains remain largely yet unexplored.

Original languageAmerican English
Title of host publicationProceedings of the Future Technologies Conference (FTC) 2018
StatePublished - 1 Jan 2018

Keywords

  • learning analytics
  • metasynthesis
  • educational data mining

EGS Disciplines

  • Instructional Media Design

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