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The current landscape of learning analytics in higher education

This study is a systematic literature review of learning analytics in higher education. It is published in the journal of Computers in Human Behavior and is freely available at https://www.sciencedirect.com/science/article/pii/S0747563218303492

 

In this study, we found that:

1. Most learning analytics research undertake a descriptive approach.

2. Interpretative and experimental studies prevail.

3. Overall there is little evidence that shows improvements in learner practice.

4. The identified potential for improving learning support and teaching is high.

5. There is a shift towards a deeper understanding of students’ learning experiences.

Abstract

Learning analytics can improve learning practice by transforming the ways we support learning processes. This study is based on the analysis of 252 papers on learning analytics in higher education published between 2012 and 2018. The main research question is: What is the current scientific knowledge about the application of learning analytics in higher education? The focus is on research approaches, methods and the evidence for learning analytics. The evidence was examined in relation to four earlier validated propositions: whether learning analytics i) improve learning outcomes, ii) support learning and teaching, iii) are deployed widely, and iv) are used ethically. The results demonstrate that overall there is little evidence that shows improvements in students’ learning outcomes (9%) as well as learning support and teaching (35%). Similarly, little evidence was found for the third (6%) and the forth (18%) proposition. Despite the fact that the identified potential for improving learner practice is high, we cannot currently see much transfer of the suggested potential into higher educational practice over the years. However, the analysis of the existing evidence for learning analytics indicates that there is a shift towards a deeper understanding of students’ learning experiences for the last years.

 

Olga Viberg (born in 1982) has obtained her PhD in Informatics at Örebro University School of Business, Sweden in 2015. She has been a lecturer at the School of Languages and Media Studies and at the School of Technology and Business Studies at Dalarna University, Sweden since 2008. Currently she is assistant professor in Media Technology and Interaction Design (MID) at the School of Computer Science and Communication at KTH, and is a part of the research group in Technology Enhanced Learning. She is an active member of the International Association for Mobile Learning (IAmLearn) and the coordinator of the IAmLearn Language Learning SIG.