Supporting Learning Analytics Adoption: Evaluating the Learning Analytics Capability Model in a Real-World Setting

Author:

Knobbout Justian1,van der Stappen Esther2ORCID,Versendaal Johan3,van de Wetering Rogier4ORCID

Affiliation:

1. Data & Analytics Centre of Excellence, HU University of Applied Sciences Utrecht, P.O. Box 182, 3500 AD Utrecht, The Netherlands

2. Research Group Digital Education, Avans University of Applied Sciences, P.O. Box 90.116, 4800 Breda, The Netherlands

3. Research Group for Digital Ethics, HU University of Applied Sciences Utrecht, P.O. Box 182, 3500 AD Utrecht, The Netherlands

4. Department of Information Science, Open University, P.O. Box 2960, 6401 DL Heerlen, The Netherlands

Abstract

Although learning analytics benefit learning, its uptake by higher educational institutions remains low. Adopting learning analytics is a complex undertaking, and higher educational institutions lack insight into how to build organizational capabilities to successfully adopt learning analytics at scale. This paper describes the ex-post evaluation of a capability model for learning analytics via a mixed-method approach. The model intends to help practitioners such as program managers, policymakers, and senior management by providing them a comprehensive overview of necessary capabilities and their operationalization. Qualitative data were collected during pluralistic walk-throughs with 26 participants at five educational institutions and a group discussion with seven learning analytics experts. Quantitative data about the model’s perceived usefulness and ease-of-use was collected via a survey (n = 23). The study’s outcomes show that the model helps practitioners to plan learning analytics adoption at their higher educational institutions. The study also shows the applicability of pluralistic walk-throughs as a method for ex-post evaluation of Design Science Research artefacts.

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

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