Automatic Recognition of Learner Types in Exploratory Learning Environments
- Saleema Amershi ,
- Cristina Conati
ITS'06 Proceedings of the 8th international conference on Intelligent Tutoring Systems |
Published by Springer-Verlag Berlin
In this paper, we present the application of unsupervised learning techniques to automatically recognize behaviors that may be detrimental to learning during interaction with an Exploratory Learning Environment (ELE). First, we describe how we use the k-means clustering algorithm for off-line identification of learner groups with distinguishing interaction patterns who also show similar learning improvements with an ELE. We then discuss how a kmeans on-line classifier, trained with the learner groups detected off-line, can be used for adaptive support in ELEs. We aim to show the value of a data-based approach for recognizing learners as an alternative to knowledge-based approaches that tend to be complex and time-consuming even for domain experts, especially in highly unstructured ELEs.