Learning and Teaching in the Era of Generative Artificial Intelligence Technologies: An In-Depth Exploration Using Multi-Analytical SEM-ANN Approach

IF 2.8 3区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH
Muhammad Farrukh Shahzad, Shuo Xu, Xin An, Hira Zahid, Muhammad Asif
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引用次数: 0

Abstract

The arrival of generative artificial intelligence (GAI) technologies marks a significant transformation in the educational landscape, with implications for teaching and learning performance. These technologies can generate content, simulate interactions, and adapt to learners' needs, offering opportunities for interactive learning experiences. In China's education sector, incorporating GAI technologies can address educational challenges, enhance teaching practices, and improve performance. This study scrutinises the impact of GAI technologies on learning performance in the education sector, focusing on the mediating roles of e-learning competence (EC), desire for learning (DL), and beliefs about the future (BF), as well as the moderating role of facilitating conditions amongst Chinese educators. Data was collected from 411 teachers across various educational institutions in China using purposive sampling. PLS-SEM and ANN were employed to assess the suggested structural model. The study results indicate that GAI technologies significantly influence learning performance by mediating EC, DL, and BF roles. Furthermore, facilitating conditions positively moderate the association amongst GAI technologies and EC, DL, and BF. This study underscores the critical role of self-determination theory in shaping the effective incorporation of GAI technologies in education, offering valuable insights to improve teaching and learning outcomes in the Chinese education sector.

生成式人工智能技术时代的学与教:基于多分析SEM-ANN方法的深入探索
生成式人工智能(GAI)技术的到来标志着教育领域的重大变革,对教学和学习绩效产生了影响。这些技术可以生成内容,模拟互动,并适应学习者的需求,为交互式学习体验提供机会。在中国的教育部门,采用GAI技术可以解决教育挑战,加强教学实践,提高绩效。本研究考察了GAI技术对教育部门学习绩效的影响,重点研究了电子学习能力(EC)、学习欲望(DL)和对未来的信念(BF)的中介作用,以及促进条件在中国教育工作者中的调节作用。采用有目的抽样的方法,从中国各教育机构的411名教师中收集数据。采用PLS-SEM和ANN对所建议的结构模型进行评估。研究结果表明,GAI技术通过中介EC、DL和BF角色显著影响学习绩效。此外,便利条件正向调节GAI技术与EC、DL和BF之间的关联。本研究强调了自我决定理论在塑造GAI技术在教育中的有效整合方面的关键作用,为改善中国教育部门的教与学成果提供了宝贵的见解。
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来源期刊
European Journal of Education
European Journal of Education EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
4.50
自引率
0.00%
发文量
47
期刊介绍: The prime aims of the European Journal of Education are: - To examine, compare and assess education policies, trends, reforms and programmes of European countries in an international perspective - To disseminate policy debates and research results to a wide audience of academics, researchers, practitioners and students of education sciences - To contribute to the policy debate at the national and European level by providing European administrators and policy-makers in international organisations, national and local governments with comparative and up-to-date material centred on specific themes of common interest.
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