Personalized Learning
Personalized learning aims to tailor educational experiences to individual student needs and learning styles, improving learning outcomes and engagement. Current research focuses on leveraging large language models (LLMs), graph neural networks, and federated learning techniques to create adaptive learning environments, generate personalized learning materials, and predict student knowledge states. These advancements are being evaluated through rigorous testing and benchmark datasets, with a focus on improving model accuracy, interpretability, and scalability while addressing privacy concerns. The ultimate goal is to create more effective and equitable educational systems that cater to diverse learning preferences and abilities.
Papers
Evaluating the capability of large language models to personalize science texts for diverse middle-school-age learners
Michael Vaccaro, Mikayla Friday, Arash Zaghi
Educational Customization by Homogenous Grouping of e-Learners based on their Learning Styles
Mohammadreza amiri, GholamAli montazer, Ebrahim Mousavi