A Case Study: Data Mining Applied to Student Enrollment
Abstract
One of the main problems faced by university students is deciding the right
learning path based on available information such as courses, schedules and professors.
In this context, this paper presents a recommender system based on data mining. This
recommender system intends to create awareness of the difficulty and amount of
workload entailed by a chosen set of courses. For the purpose of building the underlying
model, this paper describes the generation of domain specific variables that are capable of
representing students’ past performance. The objective is to improve students’
performance in general, by reducing the rate of misguided enrollment decisions.
How to cite
Vialardi Sacín, C., Chue Gallardo, J., Barrientos, A., Victoria, D., Estrella, J., Peche, J. P., y Ortigosa, Á. (junio 2010). A case study: data mining applied to student enrollment. In Educational Data Mining 2010.Publisher
Educational Data MiningRelated Resource(s)
http://www.educationaldatamining.org/conferences/index.php/EDM/2010/paper/download/880/846https://repositorio.uam.es/bitstream/handle/10486/664976/case_vialardi_EDM_2010.pdf
Note
Indexado en Scopus
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