Abstract:
We explored the possibility of predicting student emotions (boredom, flow/engagement, confusion, and frustration) by analyzing the text of student and tutor dialogues dur...Show MoreMetadata
Abstract:
We explored the possibility of predicting student emotions (boredom, flow/engagement, confusion, and frustration) by analyzing the text of student and tutor dialogues during interactions with an Intelligent Tutoring System (ITS) with conversational dialogues. After completing a learning session with the tutor, student emotions were judged by the students themselves (self-judgments), untrained peers, and trained judges. Transcripts from the tutorial dialogues were analyzed with four methods that included 1) identifying direct expressions of affect, 2) aligning the semantic content of student responses to affective terms, 3) identifying psychological and linguistic terms that are predictive of affect, and 4) assessing cohesion relationships that might reveal student affect. Models constructed by regressing the proportional occurrence of each emotion on textual features derived from these methods yielded large effects (R2 = 38%) for the psychological, linguistic, and cohesion-based methods, but not the direct expression and semantic alignment methods. We discuss the theoretical, methodological, and applied implications of our findings toward text-based emotion detection during tutoring.
Published in: IEEE Transactions on Learning Technologies ( Volume: 5, Issue: 4, Oct.-Dec. 2012)
DOI: 10.1109/TLT.2012.10
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Emotions In Students ,
- Frustration ,
- Fluidic ,
- Emotion Recognition ,
- Textual Features ,
- Learning Session ,
- Linguistic Terms ,
- Intelligent Tutoring Systems ,
- Mental State ,
- Learning Environment ,
- Cognitive Status ,
- Multiple Linear Regression Analysis ,
- Affective States ,
- Multiple Linear Regression Model ,
- Semantic Similarity ,
- Part-of-speech ,
- Text Words ,
- Linguistic Features ,
- Computer Skills ,
- Emotion Words ,
- Emotion Terms ,
- Two-parameter Model ,
- Diagnostic Prediction ,
- Cohesive Model ,
- Content Words ,
- Second-person Pronouns ,
- Linguistic Model ,
- Coreference ,
- Definition Of State ,
- Main Verb
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Emotions In Students ,
- Frustration ,
- Fluidic ,
- Emotion Recognition ,
- Textual Features ,
- Learning Session ,
- Linguistic Terms ,
- Intelligent Tutoring Systems ,
- Mental State ,
- Learning Environment ,
- Cognitive Status ,
- Multiple Linear Regression Analysis ,
- Affective States ,
- Multiple Linear Regression Model ,
- Semantic Similarity ,
- Part-of-speech ,
- Text Words ,
- Linguistic Features ,
- Computer Skills ,
- Emotion Words ,
- Emotion Terms ,
- Two-parameter Model ,
- Diagnostic Prediction ,
- Cohesive Model ,
- Content Words ,
- Second-person Pronouns ,
- Linguistic Model ,
- Coreference ,
- Definition Of State ,
- Main Verb
- Author Keywords