Did You Get That? Predicting Learners’ Comprehension of a Video Lecture from Visualizations of Their Gaze Data

Author:

Kok Ellen M.12ORCID,Jarodzka Halszka2ORCID,Sibbald Matt3ORCID,van Gog Tamara1

Affiliation:

1. Department of Education Utrecht University

2. Department of Online Learning and Instruction Open University of the Netherlands

3. McMaster Education Research, Innovation and Theory (MERIT) Program, Faculty of Health Sciences McMaster University

Abstract

AbstractIn online lectures, unlike in face‐to‐face lectures, teachers lack access to (nonverbal) cues to check if their students are still “with them” and comprehend the lecture. The increasing availability of low‐cost eye‐trackers provides a promising solution. These devices measure unobtrusively where students look and can visualize these data to teachers. These visualizations might inform teachers about students’ level of “with‐me‐ness” (i.e., do students look at the information that the teacher is currently talking about) and comprehension of the lecture, provided that (1) gaze measures of “with‐me‐ness” are related to comprehension, (2) people not trained in eye‐tracking can predict students’ comprehension from gaze visualizations, (3) we understand how different visualization techniques impact this prediction. We addressed these issues in two studies. In Study 1, 36 students watched a video lecture while being eye‐tracked. The extent to which students looked at relevant information and the extent to which they looked at the same location as the teacher both correlated with students’ comprehension (score on an open question) of the lecture. In Study 2, 50 participants watched visualizations of students’ gaze (from Study 1), using six visualization techniques (dynamic and static versions of scanpaths, heatmaps, and focus maps) and were asked to predict students’ posttest performance and to rate their ease of prediction. We found that people can use gaze visualizations to predict learners’ comprehension above chance level, with minor differences between visualization techniques. Further research should investigate if teachers can act on the information provided by gaze visualizations and thereby improve students’ learning.

Publisher

Wiley

Subject

Artificial Intelligence,Cognitive Neuroscience,Experimental and Cognitive Psychology

Reference72 articles.

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4. Blascheck T. Kurzhals K. Raschke M. Burch M. Weiskopf D. &Ertl T.(2014).State‐of‐the‐Art of Visualization for Eye Tracking Data. InR.Borgo R.Maciejewski &I.Viola(Eds.) Eurographics Conference on Visualization (EuroVis). (pp.63–82).Eurographics Associationhttps://doi.org/10.2312/eurovisstar.20141173

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