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  4. Learning Analytics to Determine Profile Dimensions of Students Associated with Their Academic Performance
 
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Learning Analytics to Determine Profile Dimensions of Students Associated with Their Academic Performance

Journal
Applied Sciences
ISSN
2076-3417
Date Issued
2022
Author(s)
Gonzalez-Nucamendi, Andres
Noguez, Julieta
Neri, Luis
Robledo-Rella, Víctor
García-Castelán, Rosa María Guadalupe
Escobar Castillejos, David  
Facultad de Ingeniería - CampCM  
Type
Resource Types::text::journal::journal article
DOI
10.3390/app122010560
URL
https://scripta.up.edu.mx/handle/20.500.12552/3870
Abstract
With the recent advancements of learning analytics techniques, it is possible to build predictive models of student academic performance at an early stage of a course, using student’s self-regulation learning and affective strategies (SRLAS), and their multiple intelligences (MI). This process can be conducted to determine the most important factors that lead to good academic performance. A quasi-experimental study on 618 undergraduate students was performed to determine student profiles based on these two constructs: MI and SRLAS. After calibrating the students’ profiles, learning analytics techniques were used to study the relationships among the dimensions defined by these constructs and student academic performance using principal component analysis, clustering patterns, and regression and correlation analyses. The results indicate that the logical-mathematical intelligence, intrinsic motivation, and self-regulation have a positive impact on academic performance. In contrast, anxiety and dependence on external motivation have a negative effect on academic performance. A priori knowledge of the characteristics of a student sample and its likely behavior predicted by the models may provide both students and teachers with an early-awareness alert that can help the teachers in designing enhanced proactive and strategic decisions aimed to improve academic performance and reduce dropout rates. From the student side, knowledge about their main academic profile will sharpen their metacognition, which may improve their academic performance.
Subjects

Educational innovatio...

Higher education

Academic performance

Multiple intelligence...

Self-regulation skill...

Affective strategies


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