Predicting Student Actions in a Procedural Training Environment
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Abstract
Data mining is known to have a potential for predicting user performance. However, there are few studies that explore its potential for predicting student behavior in a procedural training environment. This paper presents a collective student model, which is built from past student logs. These logs are first grouped into clusters. Then, an extended automaton is created for each cluster based on the sequences of events found in the cluster logs. The main objective of this model is to predict the actions of new students for improving the tutoring feedback provided by an intelligent tutoring system. The proposed model has been validated using student logs collected in a 3D virtual laboratory for teaching biotechnology. As a result of this validation, we concluded that the model can provide reasonably good predictions and can support tutoring feedback that is better adapted to each student type.
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D. Riofrıo-Luzcando, J. Ramırez and M. Berrocal-Lobo, "Predicting Student Actions in a Procedural Training Environment," in IEEE Transactions on Learning Technologies, vol. 10, no. 4, pp. 463-474, 1 Oct.-Dec. 2017, doi: 10.1109/TLT.2017.2658569. keywords: {Adaptation models;Data mining;Training;Data models;Predictive models;Biological system modeling;Learning systems;Electronic learning;Educational data mining;e-learning;procedural training;intelligent tutoring systems},
