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Personalized Education in the Artificial Intelligence Era: What to Expect Next

机译:人工智能时代的个性化教育:下一个预期的内容

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The objective of personalized learning is to design an effective knowledge acquisition track that matches the learner's strengths and bypasses his/her weaknesses to ultimately meet his/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 rise of artificial intelligence (AI) and machine learning (ML), together with advances in big data analysis, has introduced novel perspectives that enhance personalized education in numerous ways. By taking advantage of AI/ML methods, the educational platform precisely acquires the student?s characteristics. This is done, in part, by observing 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, and connect appropriate learners by suggestion, accurate performance evaluation, and so forth. 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 the diversity, removing the biases induced by data and algorithms, and so on. In this article, 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.
机译:个性化学习的目标是设计一个有效的知识获取轨道,与学习者的优势相匹配,并绕过他/她的弱点,最终满足他/她所需的目标。这一概念几年前出现,正在全球迅速越来越多的教育机构采用。近年来,人工智能(AI)和机器学习(ML)的崛起以及大数据分析的进步,引入了以多种方式增强个性化教育的新颖观点。通过利用AI / ML方法,教育平台精确地获得了学生的特征。部分是通过观察过去的经验以及通过探索学习者的特征和相似性分析可用的大数据来完成。例如,它可以推荐众多可访问中最合适的内容,建议设计精心设计的长期课程,并通过建议,准确的绩效评估等来连接适当的学习者。尽管如此,基于AI的个性化教育的几个方面仍然是未开发的。其中包括补偿缺乏对同龄人的不利影响,创造和维持学习的动机,增加多样性,消除数据和算法引起的偏差,等等。在本文中,同时提供了对最先进的研究的简要审查,我们调查了基于AI / ML的个性化教育和讨论潜在解决方案的挑战。

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  • 来源
    《IEEE Signal Processing Magazine》 |2021年第3期|37-50|共14页
  • 作者单位

    Univ Tubingen D-72076 Tubingen Baden Wurttembe Germany|Fraunhofer Heinrich Hertz Inst D-10587 Berlin Germany;

    Univ Massachusetts Coll Informat & Comp Sci Amherst MA 01003 USA|Princeton Univ Princeton NJ 08544 USA;

    Univ Miami Dept Elect & Comp Engn Miami FL 33146 USA;

    Univ Cambridge Machine Learning Artificial Intelligence & Med Cambridge CB2 1TN England|Alan Turing Inst London NW1 2DB England|Univ Calif Los Angeles Los Angeles CA 90095 USA;

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  • 正文语种 eng
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