This paper presents a data mining methodology to analyze the careers of students, where a career can be seen as a sequence of exams. The model is built using sequential pattern analysis and uses the algorithm SPAM. We consider an ideal career corresponding to a student which has taken each examination just after the end of the corresponding course, without delays. The frequent patterns identified by the sequential pattern analysis are then compared with the career of the ideal student. The most interesting patterns are then used to refine the analysis by using clustering techniques. Finally, we apply this methodology to a real case study and interprete the results.

Sequential patterns analysis in a student database / R. Campagni; D. Merlini; R. Sprugnoli. - ELETTRONICO. - (2012), pp. 1-16. (Intervento presentato al convegno ECML-PKDD Workshop: Mining and exploiting interpretable local patterns (I-Pat 2012) tenutosi a Bristol, UK nel September, 24-28).

Sequential patterns analysis in a student database

CAMPAGNI, RENZA;MERLINI, DONATELLA;SPRUGNOLI, RENZO
2012

Abstract

This paper presents a data mining methodology to analyze the careers of students, where a career can be seen as a sequence of exams. The model is built using sequential pattern analysis and uses the algorithm SPAM. We consider an ideal career corresponding to a student which has taken each examination just after the end of the corresponding course, without delays. The frequent patterns identified by the sequential pattern analysis are then compared with the career of the ideal student. The most interesting patterns are then used to refine the analysis by using clustering techniques. Finally, we apply this methodology to a real case study and interprete the results.
2012
Proceedings of ECML-PKDD Workshop: I-Pat, Mining and exploiting interpretable local patterns
ECML-PKDD Workshop: Mining and exploiting interpretable local patterns (I-Pat 2012)
Bristol, UK
September, 24-28
R. Campagni; D. Merlini; R. Sprugnoli
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/743525
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