Teachers' Vocal Expressions and Student Engagement in Asynchronous Video Learning
Hung-Yue Suen, Yu-Sheng Su

TL;DR
This study investigates how teachers' vocal emotional expressions in asynchronous videos affect student engagement, revealing that positive high-arousal emotions like happiness and surprise boost engagement, while negative high-arousal emotions like anger diminish it.
Contribution
It introduces a computational analysis approach to quantify vocal emotions and links specific vocal expressions to student engagement in MOOC videos.
Findings
Positive valence and high arousal vocal expressions like happiness increase engagement.
Negative high-arousal emotions such as anger decrease engagement.
Verbal emotive expressions alone did not significantly impact engagement.
Abstract
Asynchronous video learning, including massive open online courses (MOOCs), offers flexibility but often lacks students' affective engagement. This study examines how teachers' verbal and nonverbal vocal emotive expressions influence students' self-reported affective engagement. Using computational acoustic and sentiment analysis, valence and arousal scores were extracted from teachers' verbal vocal expressions, and nonverbal vocal emotions were classified into six categories: anger, fear, happiness, neutral, sadness, and surprise. Data from 210 video lectures across four MOOC platforms and feedback from 738 students collected after class were analyzed. Results revealed that teachers' verbal emotive expressions, even with positive valence and high arousal, did not significantly impact engagement. Conversely, vocal expressions with positive valence and high arousal, such as happiness and…
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