Students’ engagements reflect their level of involvement in an ongoing learning process which can be estimated through their interactions with a computer-based learning or assessment system. A pre-requirement for stimulating student engagement lies in the capability to have an approximate representation model for comprehending students’ varied (dis)engagement behaviors. In this paper, we utilized model-based clustering for this purpose which gener- ates K mixture Markov models to group students’ traces containing their (dis)engagement behavioral patterns. To prevent the Expectation–Maximization (EM) algorithm from getting stuck in a local maxima, we also introduced a K-means-based initialization method named as K-EM. We performed an experimental work on two real datasets using the three variants of the EM algorithm: the original EM, emEM, K-EM; and, non-mixture baseline models for both datasets. The proposed K-EM has shown very promising results and achieved signifi- cant performance difference in comparison with the other approaches particularly using the Dataset1. Hence, we suggest to perform further experiments using large dataset(s) to validate our method. Additionally, visualization of the resultant clusters through first-order Markov chains reveals very useful insights about (dis)engagement behaviors depicted by the students. We conclude the paper with a discussion on the usefulness of our approach, limitations and potential extensions of this work.

Modeling and predicting students’ engagement behaviors using mixture Markov models / R. Maqsood, P. Ceravolo, C. Romero, S. Ventura. - In: KNOWLEDGE AND INFORMATION SYSTEMS. - ISSN 0219-1377. - 64:(2022 Apr 07), pp. 1349-1384. [10.1007/s10115-022-01674-9]

Modeling and predicting students’ engagement behaviors using mixture Markov models

P. Ceravolo
Secondo
;
2022

Abstract

Students’ engagements reflect their level of involvement in an ongoing learning process which can be estimated through their interactions with a computer-based learning or assessment system. A pre-requirement for stimulating student engagement lies in the capability to have an approximate representation model for comprehending students’ varied (dis)engagement behaviors. In this paper, we utilized model-based clustering for this purpose which gener- ates K mixture Markov models to group students’ traces containing their (dis)engagement behavioral patterns. To prevent the Expectation–Maximization (EM) algorithm from getting stuck in a local maxima, we also introduced a K-means-based initialization method named as K-EM. We performed an experimental work on two real datasets using the three variants of the EM algorithm: the original EM, emEM, K-EM; and, non-mixture baseline models for both datasets. The proposed K-EM has shown very promising results and achieved signifi- cant performance difference in comparison with the other approaches particularly using the Dataset1. Hence, we suggest to perform further experiments using large dataset(s) to validate our method. Additionally, visualization of the resultant clusters through first-order Markov chains reveals very useful insights about (dis)engagement behaviors depicted by the students. We conclude the paper with a discussion on the usefulness of our approach, limitations and potential extensions of this work.
Student engagement behavior; Mixture Markov models; Model-based clustering; Expectation–Maximization algorithm; K-means clustering; Sequential traces; Categorical data;
Settore INF/01 - Informatica
7-apr-2022
https://trebuchet.public.springernature.app/get_content/f0f6157f-38fe-429a-aa69-68067e9c762b
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2434/922525
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