Educational Theories and Learning Analytics: From Data to Knowledge
The Whole Is Greater Than the Sum of Its Parts
J. Wong ( Erasmus Universiteit Rotterdam)
M Baars ( Erasmus Universiteit Rotterdam)
B. de Koning ( Erasmus Universiteit Rotterdam)
T. van der Zee (Universiteit Leiden)
Daniel Davis (TU Delft - Web Information Systems)
M. Khalil (University of Bergen)
Geert-Jan Houben (TU Delft - Web Information Systems)
F. Paas ( Erasmus Universiteit Rotterdam, University of Wollongong)
More Info
expand_more
Other than for strictly personal use, it is not permitted to download, forward or distribute the text or part of it, without the consent of the author(s) and/or copyright holder(s), unless the work is under an open content license such as Creative Commons.
Abstract
The study of learning is grounded in theories and research. Since learning is complex and not directly observable, it is often inferred by collecting and analysing data based on the things learners do or say. By virtue, theories are developed from the analyses of data collected. With the proliferation of technology, large amounts of data are generated when students learn online. Therefore, researchers not only have data on students’ learning performance, but they also have data on the actions students take to achieve the desired learning outcomes. These data could help researchers to understand how students learn and the conditions needed for successful learning. In turn, the information can be translated to instructional and learning design to support students. The aim of the chapter is to discuss how learning theories and learning analytics are important components of educational research. To achieve this aim, studies employing learning analytics are qualitatively reviewed to examine which theories have been used and how the theories have been investigated. The results of the review show that self-regulated learning, motivation, and social constructivism theories were used in studies employing learning analytics. However, the studies at present are mostly correlational. Therefore, experimental studies are needed to examine how theory-informed practices can be implemented so that students can be better supported in online learning environments. The chapter concludes by proposing an iterative loop for educational research employing learning analytics in which learning theories guide data collection and analyses. To convert data into knowledge, it is important to recognize what we already know and what we want to examine.