Research on Learning Analytics is closely related to the use of a Digital Learning Environment, which can be defined as a learning ecosystem in which to teach, learn and develop skills in the classroom, online or in hybrid mode. Using this, Educational Data, continuously updated and growing, have become Big Data. To make the most of these data, it is useful to use Learning Analytics techniques to analyze and interpret them, and to obtain enough information to make decisions. Predicting student learning outcomes is one of the main topics in learning analytics research. This research work has the main goal of building a model for predicting which score range students will achieve at the end of the online training. In this way, in future editions of the project, by analyzing the situation of students during the online training, we may provide students with personalized feedback to increase their involvement in the training and prevent dropouts. We analyzed three past editions of the Digital Math Training online training and developed two Random Forest models capable of predicting the final score range obtained by the students after the first three and the first six problems. We have also developed two Probabilistic Neural Network models with the same purpose, but with worse results.

Learning analytics to monitor and predict student learning processes in problem solving activities during an online training

Fissore Cecilia
;
Floris Francesco
;
Marchisio Marina
;
Rabellino Sergio
2023-01-01

Abstract

Research on Learning Analytics is closely related to the use of a Digital Learning Environment, which can be defined as a learning ecosystem in which to teach, learn and develop skills in the classroom, online or in hybrid mode. Using this, Educational Data, continuously updated and growing, have become Big Data. To make the most of these data, it is useful to use Learning Analytics techniques to analyze and interpret them, and to obtain enough information to make decisions. Predicting student learning outcomes is one of the main topics in learning analytics research. This research work has the main goal of building a model for predicting which score range students will achieve at the end of the online training. In this way, in future editions of the project, by analyzing the situation of students during the online training, we may provide students with personalized feedback to increase their involvement in the training and prevent dropouts. We analyzed three past editions of the Digital Math Training online training and developed two Random Forest models capable of predicting the final score range obtained by the students after the first three and the first six problems. We have also developed two Probabilistic Neural Network models with the same purpose, but with worse results.
2023
2023 IEEE 47th Annual Computers, Software, and Applications Conference
Torino
27 –29 June 2023
Proceedings of the 2023 IEEE 47th Annual Computers, Software, and Applications Conference (COMPSAC)
IEEE
481
489
Digital Learning Environment, Educational Data Mining, Intervention, Learning Analytics, Learning process
Fissore Cecilia, Floris Francesco, Marchisio Marina, Rabellino Sergio
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/1923399
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