VACULÍK, Karel, Leona NEZVALOVÁ and Lubomír POPELÍNSKÝ. Educational data mining for analysis of students’ solutions. Online. In Gennady Agre, Pascal Hitzler, Adila A. Krisnadhi, Sergei O. Kuznetsov. Artificial Intelligence: Methodology, Systems, and Applications - 16th International Conference, AIMSA 2014. London: Springer, 2014, p. 150-161. ISBN 978-3-319-10553-6. Available from: https://dx.doi.org/10.1007/978-3-319-10554-3_14.
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Basic information
Original name Educational data mining for analysis of students’ solutions
Authors VACULÍK, Karel (203 Czech Republic, belonging to the institution), Leona NEZVALOVÁ (203 Czech Republic, belonging to the institution) and Lubomír POPELÍNSKÝ (203 Czech Republic, guarantor, belonging to the institution).
Edition London, Artificial Intelligence: Methodology, Systems, and Applications - 16th International Conference, AIMSA 2014, p. 150-161, 12 pp. 2014.
Publisher Springer
Other information
Original language English
Type of outcome Proceedings paper
Field of Study 10201 Computer sciences, information science, bioinformatics
Country of publisher United Kingdom of Great Britain and Northern Ireland
Confidentiality degree is not subject to a state or trade secret
Publication form electronic version available online
Impact factor Impact factor: 0.402 in 2005
RIV identification code RIV/00216224:14330/14:00076477
Organization unit Faculty of Informatics
ISBN 978-3-319-10553-6
ISSN 0302-9743
Doi http://dx.doi.org/10.1007/978-3-319-10554-3_14
Keywords in English educational data mining; logic proofs; clustering; outlier detection; sequence mining
Tags International impact, Reviewed
Changed by Changed by: RNDr. Pavel Šmerk, Ph.D., učo 3880. Changed: 27/4/2015 05:56.
Abstract
We introduce a novel method for analysis of logic proofs constructed by undergraduate students that employs sequence mining for manipulation with temporal information about all actions that a student performed, and also graph mining for finding frequent subgraphs on different levels of generalisation. We show that this representation allows to find interesting subgroups of similar solutions and also to detect outlying solutions. Specifically, distribution of errors is not independent on behavioural patterns and we are able to find clusters of erroneous solutions. We also observed significant dependence between time duration and an appearance of the most serious error.
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