Personalized Education in the AI Era: What to Expect Next?

The objective of personalized learning is to design an effective knowledge acquisition track that matches the learner's strengths and bypasses her weaknesses to ultimately meet her desired goal. This concept emerged several years ago and is being adopted by a rapidly-growing number of education...

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Veröffentlicht in:arXiv.org 2021-01
Hauptverfasser: Maghsudi, Setareh, Lan, Andrew, Xu, Jie, van der Schaar, Mihaela
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description The objective of personalized learning is to design an effective knowledge acquisition track that matches the learner's strengths and bypasses her weaknesses to ultimately meet her desired goal. This concept emerged several years ago and is being adopted by a rapidly-growing number of educational institutions around the globe. In recent years, the boost of artificial intelligence (AI) and machine learning (ML), together with the advances in big data analysis, has unfolded novel perspectives to enhance personalized education in numerous dimensions. By taking advantage of AI/ML methods, the educational platform precisely acquires the student's characteristics. This is done, in part, by observing the past experiences as well as analyzing the available big data through exploring the learners' features and similarities. It can, for example, recommend the most appropriate content among numerous accessible ones, advise a well-designed long-term curriculum, connect appropriate learners by suggestion, accurate performance evaluation, and the like. Still, several aspects of AI-based personalized education remain unexplored. These include, among others, compensating for the adverse effects of the absence of peers, creating and maintaining motivations for learning, increasing diversity, removing the biases induced by the data and algorithms, and the like. In this paper, while providing a brief review of state-of-the-art research, we investigate the challenges of AI/ML-based personalized education and discuss potential solutions.
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subjects Algorithms
Artificial intelligence
Big Data
Computer Science - Artificial Intelligence
Computer Science - Computers and Society
Computer Science - Learning
Curricula
Customization
Data analysis
Education
Knowledge acquisition
Machine learning
Performance evaluation
State-of-the-art reviews
Teaching methods
title Personalized Education in the AI Era: What to Expect Next?
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