DocumentCode
3143060
Title
To improve Bayesian Network Learner Modelling thanks to Multinet
Author
Hibou, Mathieu ; Labat, Jean-Marc
Author_Institution
Paris Descartes Univ., Paris
fYear
2007
fDate
18-20 July 2007
Firstpage
783
Lastpage
787
Abstract
Bayesian Network (BN) are often used for student modelling but some problems remain, particularly the question of the structure of the BN. The key idea of this paper is that the structure of a BN-based Student Model (BNb-SM) depends on the level of expertise of the student. Therefore, a model should be constituted with several concurrent BNs (same nodes, different structures), instead of a single one, as it is usually the case. We present a conceptual model, the multinet, that allows to take into account different BNs. A multinet is a probabilistic graphical knowledge representation that can be seen as a BN mixture. We present both theoretical and experimental results obtained with real student´s data. These results give strong evidence in favour of our approach by showing that there is a correlation between the student´s levels of expertise and the Bayesian networks which fit their interactions best.
Keywords
belief networks; computer aided instruction; engineering education; knowledge representation; probability; Bayesian network; learner modelling; multinet; probabilistic graphical knowledge representation; student modelling; Bayesian methods; Knowledge representation; Network topology; Psychology; Random variables; Testing;
fLanguage
English
Publisher
ieee
Conference_Titel
Advanced Learning Technologies, 2007. ICALT 2007. Seventh IEEE International Conference on
Conference_Location
Niigata
Print_ISBN
0-7695-2916-X
Type
conf
DOI
10.1109/ICALT.2007.257
Filename
4281158
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