Emote aloud during learning with AutoTutor: Applying the Facial Action Coding System to cognitive–affective states during learning
2008; Taylor & Francis; Volume: 22; Issue: 5 Linguagem: Inglês
10.1080/02699930701516759
ISSN1464-0600
AutoresScotty D. Craig, Sidney K. D’Mello, Amy Witherspoon, Art Graesser,
Tópico(s)Innovative Teaching and Learning Methods
ResumoIn an attempt to discover the facial action units for affective states that occur during complex learning, this study adopted an emote-aloud procedure in which participants were recorded as they verbalised their affective states while interacting with an intelligent tutoring system (AutoTutor). Participants' facial expressions were coded by two expert raters using Ekman's Facial Action Coding System and analysed using association rule mining techniques. The two expert raters received an overall kappa that ranged between .76 and .84. The association rule mining analysis uncovered facial actions associated with confusion, frustration, and boredom. We discuss these rules and the prospects of enhancing AutoTutor with non-intrusive affect-sensitive capabilities.
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