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Published:2026/1/11 0:46:44

学生の成功をAIで予測! 未来の教育を応援📣

超要約: 学生の成績をAIで予測して、みんなの未来を明るくする研究だよ🌟


ギャル的キラキラポイント✨

● 成績データから、将来を予測するなんて、未来すぎ💖 ● 異種グラフ(色んなデータ)を使うから、めっちゃ詳しく分析できるってこと👀 ● AIで個別指導とか、夢みたいじゃん?✨

詳細解説

背景 学校の勉強で「ヤバい💦」ってなるコ、いるじゃん? そんなコをAI(エーアイ)で助けようって研究だよ! 今までのやり方じゃ、なかなか分かんなかった、色んなデータ(成績、授業の記録とか)の関係性を、AIが全部見抜いちゃうの! 卒業できなくて困ってるコを減らすのが目標💖

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Predicting Student Success with Heterogeneous Graph Deep Learning and Machine Learning Models

Anca Muresan / Mihaela Cardei / Ionut Cardei

Early identification of student success is crucial for enabling timely interventions, reducing dropout rates, and promoting on time graduation. In educational settings, AI powered systems have become essential for predicting student performance due to their advanced analytical capabilities. However, effectively leveraging diverse student data to uncover latent and complex patterns remains a key challenge. While prior studies have explored this area, the potential of dynamic data features and multi category entities has been largely overlooked. To address this gap, we propose a framework that integrates heterogeneous graph deep learning models to enhance early and continuous student performance prediction, using traditional machine learning algorithms for comparison. Our approach employs a graph metapath structure and incorporates dynamic assessment features, which progressively influence the student success prediction task. Experiments on the Open University Learning Analytics (OULA) dataset demonstrate promising results, achieving a 68.6% validation F1 score with only 7% of the semester completed, and reaching up to 89.5% near the semester's end. Our approach outperforms top machine learning models by 4.7% in validation F1 score during the critical early 7% of the semester, underscoring the value of dynamic features and heterogeneous graph representations in student success prediction.

cs / cs.LG