Online learning behavior analysis based on machine learning

Author:

Yan Ning,Au Oliver Tat-Sheung

Abstract

Purpose The purpose of this paper is to make a correlation analysis between students’ online learning behavior features and course grade, and to attempt to build some effective prediction model based on limited data. Design/methodology/approach The prediction label in this paper is the course grade of students, and the eigenvalues available are student age, student gender, connection time, hits count and days of access. The machine learning model used in this paper is the classical three-layer feedforward neural networks, and the scaled conjugate gradient algorithm is adopted. Pearson correlation analysis method is used to find the relationships between course grade and the student eigenvalues. Findings Days of access has the highest correlation with course grade, followed by hits count, and connection time is less relevant to students’ course grade. Student age and gender have the lowest correlation with course grade. Binary classification models have much higher prediction accuracy than multi-class classification models. Data normalization and data discretization can effectively improve the prediction accuracy of machine learning models, such as ANN model in this paper. Originality/value This paper may help teachers to find some clue to identify students with learning difficulties in advance and give timely help through the online learning behavior data. It shows that acceptable prediction models based on machine learning can be built using a small and limited data set. However, introducing external data into machine learning models to improve its prediction accuracy is still a valuable and hard issue.

Publisher

Emerald

Reference17 articles.

1. Balakrishnan, G.K. and Coetzee, D. (2013), “Predicting student retention in massive open online courses using hidden Markov models”, Technical Report No. EECS-2013-109, UC Berkeley, available at: www2.eecs.berkeley.edu/Pubs/TechRpts/2013/ (accessed September 3, 2019).

2. Berry, L.J. (2017), “Using learning analytics to predict academic success in online and face-to-face learning environments”, Dissertation for the Degree of Doctor of Education, Boise State University, Boise, ID, March 6, available at: https://scholarworks.boisestate.edu/cgi/viewcontent.cgi?article=2317&context=td (accessed September 3, 2019).

3. Brown, M. (2012), “Learning analytics: moving from concept to practice”, EDUCAUSE Learning Initiative, July, available at: https://library.educause.edu/-/media/files/library/2012/7/elib1203-pdf (accessed September 3, 2019).

4. Data mining for modeling students’ performance: a tutoring action plan to prevent academic dropout;Computers & Electrical Engineering,2018

5. Predicting student performance using advanced learning analytics,2017

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