BOOK-CHAPTER

Dropout Prediction by Interpretable Machine Learning Model Towards Preventing Student Dropout

Miki KatsuragiKenji Tanaka

Year: 2022 Advances in transdisciplinary engineering   Publisher: IOS Press

Abstract

In the education industry, the needs of online learning are significantly increasing. However, the web-based courses demonstrate higher dropout rates than traditional education courses. As a result, engaging students with data analysis is getting more crucial especially for distance learning. In this study, we analyze data on the daily learning status of students in order to predict the student’s dropout in online schools. Specifically, we trained a dropout prediction machine leaning model with 1) Basic attributes of students, 2) Progress of learning materials, and 3) Slack conversation data between students and teachers. The experimental results show that the accuracy rate of the machine learning model has reached 96.4%. As a result, the model was able to predict 78% of the students who actually dropped out of school. We also looked into feature importance by SHAP value to gain ML model interpretability.

Keywords:
Dropout (neural networks) Interpretability Conversation Artificial intelligence Computer science Machine learning Feature (linguistics) Mathematics education Psychology

Metrics

2
Cited By
1.30
FWCI (Field Weighted Citation Impact)
9
Refs
0.79
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Online Learning and Analytics
Physical Sciences →  Computer Science →  Computer Science Applications
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