2023
DOI: 10.3389/feduc.2023.1170348
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Eye tracking and artificial intelligence for competency assessment in engineering education: a review

Yakhoub Ndiaye,
Kwan Hui Lim,
Lucienne Blessing

Abstract: In recent years, eye-tracking (ET) methods have gained an increasing interest in STEM education research. When applied to engineering education, ET is particularly relevant for understanding some aspects of student behavior, especially student competency, and its assessment. However, from the instructor’s perspective, little is known about how ET can be used to provide new insights into, and ease the process of, instructor assessment. Traditionally, engineering education is assessed through time-consuming and … Show more

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