Artificial Intelligence-based methods have been thoroughly applied in various fields over the years and the educational scenario is not an exception. However, the usage of the so-called explainable Artificial Intelligence, even if desirable, is still limited, especially whenever we consider educational datasets. Moreover, the time dimension is not often regarded enough when analyzing such types of data. In this paper, we have applied the fuzzy version of the Hoeffding Decision Tree to an educational dataset, considering separately STEM and Social Sciences subjects, in order to take into consideration both the time evolution of the educational process and the possible interpretability of the final results. The considered models resulted to be successful in discriminating the passing or failing of exams at the end of consecutive semesters on the part of students. Moreover, Fuzzy Hoeffding Decision Tree occurred to be much more compact and interpretable compared to the traditional Hoeffding Decision Tree.

Incremental and Interpretable Learning Analytics Through Fuzzy Hoeffding Decision Trees

Casalino, Gabriella;Ducange, Pietro
;
Fazzolari, Michela;Pecori, Riccardo
2023-01-01

Abstract

Artificial Intelligence-based methods have been thoroughly applied in various fields over the years and the educational scenario is not an exception. However, the usage of the so-called explainable Artificial Intelligence, even if desirable, is still limited, especially whenever we consider educational datasets. Moreover, the time dimension is not often regarded enough when analyzing such types of data. In this paper, we have applied the fuzzy version of the Hoeffding Decision Tree to an educational dataset, considering separately STEM and Social Sciences subjects, in order to take into consideration both the time evolution of the educational process and the possible interpretability of the final results. The considered models resulted to be successful in discriminating the passing or failing of exams at the end of consecutive semesters on the part of students. Moreover, Fuzzy Hoeffding Decision Tree occurred to be much more compact and interpretable compared to the traditional Hoeffding Decision Tree.
2023
Fulantelli, G., Burgos, D., Casalino, G., Cimitile, M., Lo Bosco, G., Taibi, D.
Higher Education Learning Methodologies and Technologies Online. HELMeTO 2022.
contributo
1779
4th International Conference, HELMeTO 2022, Palermo, Italy, September 21–23, 2022
674
690
17
978-3-031-29799-1
978-3-031-29800-4
https://link.springer.com/chapter/10.1007/978-3-031-29800-4_51
Springer
Cham
Comitato scientifico
September 2022
Palermo, Italy
Internazionale
Learning Analytics, Incremental Learning, Hoeffding Decision Trees, Fuzzy Logic, Explainable Artificial Intelligence
none
Casalino, Gabriella; Ducange, Pietro; Fazzolari, Michela; Pecori, Riccardo
273
info:eu-repo/semantics/conferenceObject
4
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11389/44295
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