Authors
Michael V Yudelson, Kenneth R Koedinger, Geoffrey J Gordon
Publication date
2013
Conference
Artificial Intelligence in Education: 16th International Conference, AIED 2013, Memphis, TN, USA, July 9-13, 2013. Proceedings 16
Pages
171-180
Publisher
Springer Berlin Heidelberg
Description
Bayesian Knowledge Tracing (BKT)[1] is a user modeling method extensively used in the area of Intelligent Tutoring Systems. In the standard BKT implementation, there are only skill-specific parameters. However, a large body of research strongly suggests that student-specific variability in the data, when accounted for, could enhance model accuracy [5,6,8]. In this work, we revisit the problem of introducing student-specific parameters into BKT on a larger scale. We show that student-specific parameters lead to a tangible improvement when predicting the data of unseen students, and that parameterizing students’ speed of learning is more beneficial than parameterizing a priori knowledge.
Total citations
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Scholar articles
MV Yudelson, KR Koedinger, GJ Gordon - Artificial Intelligence in Education: 16th International …, 2013