AI in Education: Rationale, Principles, and Instructional Implications
- URL: http://arxiv.org/abs/2412.12116v1
- Date: Mon, 02 Dec 2024 14:08:07 GMT
- Title: AI in Education: Rationale, Principles, and Instructional Implications
- Authors: Eyvind Elstad,
- Abstract summary: Generative AI, like ChatGPT, can create human-like content, prompting questions about its educational role.
The study emphasizes deliberate strategies to ensure AI complements, not replaces, genuine cognitive effort.
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- Abstract: This study examines the integration of generative AI in schools, assessing its benefits and risks. As AI use by students grows, it's crucial to understand its impact on learning and teaching practices. Generative AI, like ChatGPT, can create human-like content, prompting questions about its educational role. The article differentiates large language models from traditional search engines and stresses the need for students to develop critical source evaluation skills. Although empirical evidence on AI's classroom effects is limited, AI offers personalized learning support and problem-solving tools, alongside challenges like undermining deep learning if misused. The study emphasizes deliberate strategies to ensure AI complements, not replaces, genuine cognitive effort. AI's educational role should be context-dependent, guided by pedagogical goals. The study concludes with practical advice for teachers on effectively utilizing AI to promote understanding and critical engagement, advocating for a balanced approach to enhance students' knowledge and skills development.
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