Difference between revisions of "Engagement and Affect Detection"

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* Models detecting student affective states (boredom, confusion, engaged concentration, frustration) from the interaction with ASSISTment system
* Models detecting student affective states (boredom, confusion, engaged concentration, frustration) from the interaction with ASSISTment system
* Study involved urban, rural, and suburban learners
* Detectors generally performed the best for the same subpopulation that they were trained on (average kappa = 0.26, A′ = 0.67), and worse for other subpopulations (average kappa = 0.03 and A′ = 0.52)
* Detectors generally performed the best for the same subpopulation that they were trained on (average kappa = 0.26, A′ = 0.67), and worse for other subpopulations (average kappa = 0.03 and A′ = 0.52)
* Detectors trained on combined population generally performed better for urban and suburban population (kappa = 0.18, 0.16; A′ = 0.62, 0.66) and not as well for rural population (kappa = 0.06; A′ = 0.54)
* Detectors trained on combined population generally performed better for urban and suburban population (kappa = 0.18, 0.16; A′ = 0.62, 0.66) and not as well for rural population (kappa = 0.06; A′ = 0.54)
Chiu (2020) [https://files.eric.ed.gov/fulltext/EJ1267654.pdf pdf]
* Model identifies affective states (boredom, concentration, confusion, frustration, off task and gaming) of middle school students’ online mathematics learning in predicting their choice to study STEM in higher education.
* Model detects interaction with the ASSISTments system
* Model performs better for male students (AUC =0.641 for RFPS; AUC =0.571 for LR) than female students (AUC = 0.492 for RFPS; AUC=0.535 for LR)

Latest revision as of 00:38, 1 October 2023

Ocumpaugh et al. (2014) pdf

  • Models detecting student affective states (boredom, confusion, engaged concentration, frustration) from the interaction with ASSISTment system
  • Study involved urban, rural, and suburban learners
  • Detectors generally performed the best for the same subpopulation that they were trained on (average kappa = 0.26, A′ = 0.67), and worse for other subpopulations (average kappa = 0.03 and A′ = 0.52)
  • Detectors trained on combined population generally performed better for urban and suburban population (kappa = 0.18, 0.16; A′ = 0.62, 0.66) and not as well for rural population (kappa = 0.06; A′ = 0.54)

Chiu (2020) pdf

  • Model identifies affective states (boredom, concentration, confusion, frustration, off task and gaming) of middle school students’ online mathematics learning in predicting their choice to study STEM in higher education.
  • Model detects interaction with the ASSISTments system
  • Model performs better for male students (AUC =0.641 for RFPS; AUC =0.571 for LR) than female students (AUC = 0.492 for RFPS; AUC=0.535 for LR)