Artificial Intelligence-based Model for Predicting Student Performance in Higher Education
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TP391.48; TP311

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    Abstract:

    Education is an important enabler for achieving sustainable development goals (SDGs). Artificial intelligence (AI) is a booming technology, and people are showing increasing interests in understanding students’ behavior and evaluating their performance. For the SDGs, AI has great potential to improve education as it has started to be developed in the education field with innovative teaching methods to create better learning. This study presents an artificial intelligence-based analytic tool for predicting the performance of students in a first-year information technology course at a university. A random forest-based classification model is built to predict students’ performance in Week 6, and the model reports the accuracy of 97.03%, sensitivity of 95.26%, specificity of 98.8%, precision of 98.86%, and the Mathews correlation coefficient of 94%. The result demonstrates that this method is useful in predicting the early performance of students in courses. During the COVID-19 pandemic, experimental results showed that the proposed prediction model met the accuracy, precision, and recall required to predict elements of students’ learning behavior in a virtual education system.

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陈立军,潘正军,陈孝如.基于人工智能的高校学生表现预测模型.计算机系统应用,2023,32(6):212-220

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History
  • Received:July 04,2022
  • Revised:July 29,2022
  • Adopted:
  • Online: April 17,2023
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