INFORMATICS IN EDUCATION
Journal of Eastern and Central Europe
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INFORMATICS IN EDUCATION
ISSN 1648-5831
© Vilnius University Institute of Mathematics and Informatics
2015, Vol. 14, No. 1
pp. 13-34
DOI: http://dx.doi.org/10.15388/infedu.2015.02
Application of Interactive Classification System
in University Study Course Comparison
Ilze BIRZNIECE1, Peteris RUDZAJS2, Diana KALIBATIENE3,
Olegas VASILECAS3, Edgars RENCIS4
1Riga Technical University, Study Department
Kalku street 1, Riga, LV-1658
2Riga Technical University, Faculty of Computer Science and Information Technology
Institute of Applied Computer Systems
Kalku street 1, Riga, LV-1658
3Vilnius Gediminas Technical University, Faculty of Fundamental Science
Department of Information Systems
Sauletekio al. 11, LT-10223
4Riga Technical University, Institute of Telecommunications
Azenes street 12, Riga, LV-1048
Abstract
The growing amount of information in the world has increased the need
for computerized classification of different objects.
This situation is present in higher education as well where the
possibility of effortless detection of similarity between different
study courses would give the opportunity to organize student exchange
programmes effectively and facilitate curriculum management and development.
This area which currently relies on manual time-consuming expert activities
could benefit from application of smartly adapted machine learning
technologies. Data in this problem domain is complex leading to inability
for automatic classification approaches to always reach the desired result
in terms of classification accuracy. Therefore, our approach suggests an
automated/semi-automated classification solution, which incorporates both
machine learning facilities and interactive involvement of a domain expert
for improving classification results. The system's prototype has been
implemented and experiments are carried out.
This interactive classification system allows to classify educational data,
which often comes in unstructured or semi-structured, incomplete and/or
insufficient form, thus reducing the number of misclassified instances
significantly in comparison with the automatic machine learning approach.
Keywords:
machine learning, interactive classification, inductive learning,
curricula comparison.
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