Feb. 6, 2024, 5:44 a.m. | Benjamin Cl\'ement1 adn 3 H\'el\`ene Sauz\'eonInria FLOWERS team Talence France, Universit\'e de Bordeaux BPH lab Bordeaux France Didi

cs.LG updates on arXiv.org arxiv.org

Large class sizes pose challenges to personalized learning in schools, which educational technologies, especially intelligent tutoring systems (ITS), aim to address. In this context, the ZPDES algorithm, based on the Learning Progress Hypothesis (LPH) and multi-armed bandit machine learning techniques, sequences exercises that maximize learning progress (LP). This algorithm was previously shown in field studies to boost learning performances for a wider diversity of students compared to a hand-designed curriculum. However, its motivational impact was not assessed. Also, ZPDES did …

aim algorithm challenges class context cs.ai cs.cy cs.lg educational hypothesis intelligent machine machine learning machine learning techniques motivation performances personalized progress schools systems technologies tutoring

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