Classification of engineering students' self-efficacy towards visual-verbal preferences using data mining methods

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Abstract

The purpose of this research was to build a classification model and to measure the correlation of selfefficacy with visual-verbal preferences using data mining methods. This research used the J48 classifier and linear projection method as an approach to see patterns of data distribution between self-efficacy and visual-verbal preferences. The measurement of the correlation of engineering students' self-efficacy with visual-verbal preferences using the data mining method approach gets the result that self-efficacy does not correlate with visual-verbal preferences. However, engineering students' self-efficacy influences the achievement of initial learning outcomes. Visual-verbal preference is more influenced by students' interest in images so it can be concluded that self-efficacy affects the initial results of learning but does not have a correlation with visual-verbal preferences. The results of the decision tree provide the results that are easily understood and present a correlation between self-efficacy and visual-verbal preferences in a visual form.

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Kurniawan, C., Setyosari, P., Kamdi, W., & Ulfa, S. (2019). Classification of engineering students’ self-efficacy towards visual-verbal preferences using data mining methods. Problems of Education in the 21st Century, 77(3), 349–363. https://doi.org/10.33225/pec/19.77.349

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