Using Synchronized Eye Movements to Predict Attention in Online Video Learning

Author:

Su Caizhen1,Liu Xingyu1,Gan Xinru1,Zeng Hang2ORCID

Affiliation:

1. Faculty of Education, Beijing Normal University, Beijing 100875, China

2. Center for Educational Science and Technology, Beijing Normal University at Zhuhai, Zhuhai 519087, China

Abstract

Concerns persist about attentional engagement in online learning. The inter-subject correlation of eye movements (ISC) has shown promise as an accessible and effective method for attention assessment in online learning. This study extends previous studies investigating ISC of eye movements in online learning by addressing two research questions. Firstly, can ISC predict students’ attentional states at a finer level beyond a simple dichotomy of attention states (e.g., attending and distracted states)? Secondly, whether learners’ learning styles affect ISC’s prediction rate of attention assessment in video learning? Previous studies have shown that learners of different learning styles have different eye movement patterns when viewing static materials. However, limited research has explored the impact of learning styles on viewing patterns in video learning. An eye tracking experiment with participants watching lecture videos demonstrated a connection between ISC and self-reported attention states at a finer level. We also demonstrated that learning styles did not significantly affect ISC’s prediction rate of attention assessment in video learning, suggesting that ISC of eye movements can be effectively used without considering learners’ learning styles. These findings contribute to the ongoing discourse on optimizing attention assessment in the evolving landscape of online education.

Funder

Guangdong Province Educational Science Planning under Higher Education Special Projects

Guangdong Province Philosophy and Social Science Planning Project

Beijing Normal University at Zhuhai

Publisher

MDPI AG

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