Al-Zahrani Abdulrahman M
Department of Learning Design and Technology, Faculty of Education, University of Jeddah, P.O. box 15758, 21454, Jeddah, Saudi Arabia.
Heliyon. 2024 May 3;10(9):e30696. doi: 10.1016/j.heliyon.2024.e30696. eCollection 2024 May 15.
Despite the wave of enthusiasm for the role of Artificial Intelligence (AI) in reshaping education, critical voices urge a more tempered approach. This study investigates the less-discussed 'shadows' of AI implementation in educational settings, focusing on potential negatives that may accompany its integration. Through a multi-phased exploration consisting of content analysis and survey research, the study develops and validates a theoretical model that pinpoints several areas of concern. The initial phase, a systematic literature review, yielded 56 relevant studies from which the model was crafted. The subsequent survey with 260 participants from a Saudi Arabian university aimed to validate the model. Findings confirm concerns about human connection, data privacy and security, algorithmic bias, transparency, critical thinking, access equity, ethical issues, teacher development, reliability, and the consequences of AI-generated content. They also highlight correlations between various AI-associated concerns, suggesting intertwined consequences rather than isolated issues. For instance, enhancements in AI transparency could simultaneously support teacher professional development and foster better student outcomes. Furthermore, the study acknowledges the transformative potential of AI but cautions against its unexamined adoption in education. It advocates for comprehensive strategies to maintain human connections, ensure data privacy and security, mitigate biases, enhance system transparency, foster creativity, reduce access disparities, emphasize ethics, prepare teachers, ensure system reliability, and regulate AI-generated content. Such strategies underscore the need for holistic policymaking to leverage AI's benefits while safeguarding against its disadvantages.
尽管人工智能(AI)在重塑教育方面引发了一股热潮,但批评之声敦促采取更为审慎的方法。本研究调查了教育环境中人工智能实施较少被讨论的“阴影”,重点关注其整合可能带来的潜在负面影响。通过内容分析和调查研究相结合的多阶段探索,该研究开发并验证了一个确定了几个关注点的理论模型。初始阶段是系统的文献综述,从56项相关研究中构建了该模型。随后对一所沙特阿拉伯大学的260名参与者进行了调查,旨在验证该模型。研究结果证实了对人际联系、数据隐私与安全、算法偏差、透明度、批判性思维、获取公平性、伦理问题、教师发展、可靠性以及人工智能生成内容的后果等方面的担忧。研究结果还突出了各种与人工智能相关的担忧之间的相关性,表明这些后果相互交织,而非孤立存在。例如,提高人工智能的透明度可以同时支持教师的专业发展并促进更好的学生成绩。此外,该研究承认人工智能的变革潜力,但告诫在教育中未经审视就采用人工智能的做法。它主张采取全面策略来维持人际联系、确保数据隐私与安全、减轻偏差、提高系统透明度、培养创造力、减少获取差距、强调伦理、培养教师、确保系统可靠性以及规范人工智能生成的内容。这些策略强调了制定整体政策以利用人工智能的益处同时防范其弊端的必要性。