Authors
Yue Gong, Joseph E Beck, Neil T Heffernan
Publication date
2010
Conference
Intelligent Tutoring Systems: 10th International Conference, ITS 2010, Pittsburgh, PA, USA, June 14-18, 2010, Proceedings, Part I 10
Pages
35-44
Publisher
Springer Berlin Heidelberg
Description
Student modeling is very important for ITS due to its ability to make inferences about latent student attributes. Although knowledge tracing (KT) is a well-established technique, the approach used to fit the model is still a major issue as different model-fitting approaches lead to different parameter estimates. Performance Factor Analysis, a competing approach, predicts student performance based on the item difficulty and student historical performances. In this study, we compared these two models in terms of their predictive accuracy and parameter plausibility. For the knowledge tracing model, we also examined different model fitting algorithms: Expectation Maximization (EM) and Brute Force (BF). Our results showed that KT+EM is better than KT+BF and comparable with PFA in predictive accuracy. We also examined whether the models’ estimated parameter values were plausible. We found that by tweaking …
Total citations
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Scholar articles
Y Gong, JE Beck, NT Heffernan - … Tutoring Systems: 10th International Conference, ITS …, 2010