Automatic Detection of Off-Task Behaviors in Intelligent Tutoring Systems with Machine Learning Techniques

Identifying off-task behaviors in intelligent tutoring systems is a practical and challenging research topic. This paper proposes a machine learning model that can automatically detect students' off-task behaviors. The proposed model only utilizes the data available from the log files that reco...

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Veröffentlicht in:IEEE transactions on learning technologies 2010-07, Vol.3 (3), p.228-236
Hauptverfasser: Cetintas, Suleyman, Luo Si, Yan Ping Xin, Hord, Casey
Format: Artikel
Sprache:eng
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Zusammenfassung:Identifying off-task behaviors in intelligent tutoring systems is a practical and challenging research topic. This paper proposes a machine learning model that can automatically detect students' off-task behaviors. The proposed model only utilizes the data available from the log files that record students' actions within the system. The model utilizes a set of time features, performance features, and mouse movement features, and is compared to 1) a model that only utilizes time features and 2) a model that uses time and performance features. Different students have different types of behaviors; therefore, personalized version of the proposed model is constructed and compared to the corresponding nonpersonalized version. In order to address data sparseness problem, a robust Ridge Regression algorithm is utilized to estimate model parameters. An extensive set of experiment results demonstrates the power of using multiple types of evidence, the personalized model, and the robust Ridge Regression algorithm.
ISSN:1939-1382
1939-1382
2372-0050
DOI:10.1109/TLT.2009.44