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AI-Based Adaptive Learning: A Systematic Mapping of the Literature

Aymane Ezzaim, Aziz Dahbi, Abdelfatteh Haidine, Abdelhak Aqqal

2023JUCS - Journal of Universal Computer Science23 citationsDOIOpen Access PDF

Abstract

With the aid of technology advancement, the field of education has seen a noticeable transformation. The teaching-learning process is now more interactive and is no longer restricted to students' physical presence in the classroom but instead makes use of specialized online platforms. In recent years, solutions that offer learning routes customized to learners' needs have become more necessary. In this regard, artificial intelligence has served as an excellent answer, allowing for the building of educational systems that can accommodate a wide range of student needs. Through this paper, a systematic mapping of the literature on AI-based adaptive learning is presented. The examination of 93 articles published between 2000 and 2022 made it possible to draw several conclusions, including the number of adaptive learning environments based on AI, the types of AI algorithms used, the objectives targeted by these systems as well as factors related to adaptation. This study may serve as a springboard for further investigation into how to address the problems raised by the current state. 

Topics & Concepts

Computer scienceAdaptation (eye)Field (mathematics)Process (computing)Adaptive learningArtificial intelligenceSystematic reviewHuman–computer interactionMultimediaData sciencePsychologyPure mathematicsNeurosciencePolitical scienceOperating systemLawMEDLINEMathematicsOnline Learning and Analytics
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