Harnessing AI for Education 4.0: Drivers of Personalized Learning

IF 2.4 Q1 EDUCATION & EDUCATIONAL RESEARCH
Gina Paola Barrera Castro, Andrés Chiappe, Diego Fernando Becerra Rodríguez, Felipe Gonzalo Sepulveda
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引用次数: 0

Abstract

Personalized learning, a pedagogical approach tailored to individual needs and capacities, has garnered considerable attention in the era of artificial intelligence (AI) and the fourth industrial revolution. This systematic literature review aims to identify key drivers of personalized learning and critically assess the role of AI in reinforcing these drivers. Following PRISMA guidelines, a thorough search was conducted across major peer-reviewed journal databases, resulting in the inclusion of 102 relevant studies published between 2013 and 2022. A combination of qualitative and quantitative analyses, employing categorization and frequency analysis techniques, was performed to discern patterns and insights from the literature. The findings of this review highlight several critical drivers that contribute to the effectiveness of personalized learning, both from a broad view of education and in the specific context of e-learning. Firstly, recognizing and accounting for individual student characteristics is foundational to tailoring educational experiences. Secondly, personalizing content delivery and instructional methods ensures that learning materials resonate with learners' preferences and aptitudes. Thirdly, customizing assessment and feedback mechanisms enables educators to provide timely and relevant guidance to learners. Additionally, tailoring user interfaces and learning environments fosters engagement and accessibility, catering to diverse learning styles and needs. Moreover, the integration of AI presents significant opportunities to enhance personalized learning. AI-driven solutions offer capabilities such as automated learner profiling, adaptive content recommendation, real-time assessment, and the development of intelligent user interfaces, thereby augmenting the personalization of learning experiences. However, the successful adoption of AI in personalized learning requires addressing various challenges, including the need to develop educators' competencies, refine theoretical frameworks, and navigate ethical considerations surrounding data privacy and bias. By providing a comprehensive understanding of the drivers and implications of AI-driven personalized learning, this review offers valuable insights for educators, researchers, and policymakers in the Education 4.0 era. Leveraging the transformative potential of AI while upholding robust pedagogical principles, personalized learning holds the promise of unlocking tailored educational experiences that maximize individual potential and relevance in the digital economy.
利用人工智能促进教育 4.0:个性化学习的驱动力
个性化学习是一种根据个人需求和能力量身定制的教学方法,在人工智能(AI)和第四次工业革命时代备受关注。本系统性文献综述旨在确定个性化学习的关键驱动因素,并批判性地评估人工智能在强化这些驱动因素方面的作用。按照PRISMA指南,我们在主要的同行评审期刊数据库中进行了全面搜索,最终纳入了2013年至2022年期间发表的102篇相关研究。我们结合定性和定量分析,采用分类和频率分析技术,从文献中找出模式和见解。无论是从广义的教育角度来看,还是从电子学习的具体背景来看,本综述的研究结果都强调了有助于提高个性化学习成效的几个关键驱动因素。首先,认识和考虑学生的个人特点是定制教育体验的基础。其次,个性化内容交付和教学方法可确保学习材料与学习者的偏好和能力产生共鸣。第三,定制评估和反馈机制能让教育者及时为学习者提供相关指导。此外,定制用户界面和学习环境可提高参与度和可及性,满足不同的学习风格和需求。此外,人工智能的整合为加强个性化学习提供了重要机会。人工智能驱动的解决方案可提供自动学习者分析、自适应内容推荐、实时评估和智能用户界面开发等功能,从而增强学习体验的个性化。然而,要在个性化学习中成功采用人工智能,需要应对各种挑战,包括需要培养教育工作者的能力、完善理论框架,以及驾驭与数据隐私和偏见有关的道德考量。通过全面了解人工智能驱动的个性化学习的驱动因素和影响,本综述为教育工作者、研究人员和政策制定者在教育 4.0 时代提供了宝贵的见解。利用人工智能的变革潜力,同时坚持稳健的教学原则,个性化学习有望开启量身定制的教育体验,在数字经济时代最大限度地发挥个人潜能和相关性。
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来源期刊
Electronic Journal of e-Learning
Electronic Journal of e-Learning EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
5.90
自引率
18.20%
发文量
34
审稿时长
20 weeks
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