Video demonstrations can predict the intention to use digital learning technologies

Author:

Sprenger David A.1ORCID,Schwaninger Adrian1ORCID

Affiliation:

1. School of Applied Psychology University of Applied Sciences and Arts Northwestern Switzerland Olten Switzerland

Abstract

The technology acceptance model (TAM) uses perceived usefulness and perceived ease of use to predict the intention to use a technology which is important when deciding to invest in a technology. Its extension for e‐learning (the general extended technology acceptance model for e‐learning; GETAMEL) adds subjective norm to predict the intention to use. Technology acceptance is typically measured after the technology has been used for at least three months. This study aims to identify whether a minimal amount of exposure to the technology using video demonstrations is sufficient to predict the intention to use it three months later. In two studies—one using TAM and one using GETAMEL—we showed students of different cohorts (94 and 111 participants, respectively) video demonstrations of four digital technologies (classroom response system, classroom chat, e‐lectures, mobile virtual reality). We then measured technology acceptance immediately after the demonstration and after three months of technology use. Using partial least squares modelling, we found that perceived usefulness significantly predicted the intention to use three months later. In GETAMEL, perceived usefulness significantly predicted the intention to use for three of the four learning technologies, while subjective norm only predicted the intention to use for mobile virtual reality. We conclude that video demonstrations can provide valuable insight for decision‐makers and educators on whether students will use a technology before investing in it. Practitioner notesWhat is already known about this topic The technology acceptance model helps decision‐makers to determine whether students and teachers will adopt a new technology. Technology acceptance is typically measured after users have used the technology for three to twelve months. Perceived usefulness is a strong predictor of intention to use the technology. The predictive power of perceived ease of use for the intention to use varies from insignificant to strong. What this paper adds For the four digital learning technologies (classroom chat, classroom response system, e‐lectures and mobile virtual reality), we measure technology acceptance after a video demonstration and again after three months of usage. Using structural equation modelling, we are able to predict intention to use after three months, with perceived usefulness measured after the video demonstration. We replicate these findings with a second study using the general extended technology acceptance model. Implications for practice and/or policy Short video demonstrations can provide information for educators to predict whether students will use a technology. Early impressions of perceived usefulness are very important and valuable to predict whether students will use a technology.

Publisher

Wiley

Subject

Education

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