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The Impact of Artificial Intelligence on Student Learning Motivation in American Colleges

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The Impact of Artificial Intelligence on Student Learning Motivation in American Colleges

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目次

Personalization as a Driver of Competence
AI in Language-Heavy and EMI Contexts
The Educator Gap and the Risk of Isolation
Cognitive Passivity and the Efficiency Trap
Synthesizing Technology and Human Pedagogy
Conclusion
Bibliography

はじめに

Walking across an American college campus today, one might notice students huddled over laptops not just typing essays, but prompting generative models to outline complex arguments or clarify organic chemistry reactions. This shift represents more than a change in study habits; it signals a fundamental transformation in student motivation. While traditional classrooms often struggle with a one-size-fits-all approach, artificial intelligence offers a level of customization previously reserved for those who could afford private tutors. However, this technological leap brings a set of challenges that could undermine the very grit and determination colleges aim to foster. The impact of these tools on learning motivation is not a simple narrative of improvement. Instead, it is a complex negotiation between the benefits of personalized support and the risks of cognitive passivity. By examining how these tools function in American lecture halls and language-heavy courses, we can begin to see a picture of a student body that is more efficient, yet potentially more isolated from the traditional human elements of scholarship. The tension lies in whether these tools act as a scaffold for deeper inquiry or a crutch that simplifies the intellectual struggle necessary for true growth.

参考文献

  1. IMPACT OF ARTIFICIAL INTELLIGENCE PERSONALIZED LEARNING ON STUDENT MOTIVATION AND ACADEMIC PERFORMANCE (2025)
    Hassan Imran
    DOI リンク
  2. Impact of Artificial Intelligence Tools on Learning Motivation in University EMI Courses: A Network Meta-Analysis (2026)
    Liwei Hsu, Yu-Chun Wang
    DOI リンク
  3. Systematic review of research on artificial intelligence applications in higher education – where are the educators? (2019)
    Olaf Zawacki‐Richter, Victoria I. Marín, Melissa Bond et al.
    DOI リンク

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