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Practical early prediction of students' performance using machine learning and eXplainable AI

Authors
Jang, YeonjuChoi, SeongyuneJung, HeeseokKim, Hyeoncheol
Issue Date
11월-2022
Publisher
SPRINGER
Keywords
Learning performance prediction; Early Prediction; Artificial intelligence in education; Educational data mining; Explainable AI in education
Citation
EDUCATION AND INFORMATION TECHNOLOGIES, v.27, no.9, pp.12855 - 12889
Indexed
SSCI
SCOPUS
Journal Title
EDUCATION AND INFORMATION TECHNOLOGIES
Volume
27
Number
9
Start Page
12855
End Page
12889
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/143263
DOI
10.1007/s10639-022-11120-6
ISSN
1360-2357
Abstract
Predicting students' performance in advance could help assist the learning process; if "at-risk" students can be identified early on, educators can provide them with the necessary educational support. Despite this potential advantage, the technology for predicting students' performance has not been widely used in education due to practical limitations. We propose a practical method to predict students' performance in the educational environment using machine learning and explainable artificial intelligence (XAI) techniques. We conducted qualitative research to ascertain the perspectives of educational stakeholders. Twelve people, including educators, parents of K-12 students, and policymakers, participated in a focus group interview. The initial practical features were chosen based on the participants' responses. Then, a final version of the practical features was selected through correlation analysis. In addition, to verify whether at-risk students could be distinguished using the selected features, we experimented with various machine learning algorithms: Logistic Regression, Decision Tree, Random Forest, Multi-Layer Perceptron, Support Vector Machine, XGBoost, LightGBM, VTC, and STC. As a result of the experiment, Logistic Regression showed the best overall performance. Finally, information intended to help each student was visually provided using the XAI technique.
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