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

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

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Nome Cognome

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Prof. Nome Cognome

Città, 2026

Indice

Personalized Learning and the Drive for Autonomy
Language Acquisition and Motivation in EMI Courses
The Educator’s Absence and the Risk of Dehumanization
Meta-Analytical Trends in Student Engagement
Student Perceptions and the Future of Campus Life
Conclusion
Bibliography

Introduzione

The traditional American college classroom is undergoing a silent but profound transformation. As artificial intelligence (AI) moves from the periphery of computer science departments into the mainstream of the humanities and social sciences, the psychological landscape of student learning is shifting. Motivation, once largely dependent on interpersonal dynamics and self-regulation, now interacts with complex predictive algorithms. Students find themselves navigating a world where their learning materials adapt to their progress in real-time, offering a level of customization previously impossible in a lecture hall of three hundred people. This shift prompts a critical question: does this technological mediation strengthen the internal drive to learn, or does it create a dependency that erodes traditional academic resilience? Recent research suggests that while AI can significantly lower the barriers to entry for complex subjects, the absence of human mentorship and the risk of algorithmic isolation present new challenges to student engagement. Understanding these dynamics requires a careful look at how personalized learning, language tools, and the physical presence of educators influence the modern collegiate experience. This essay explores the multifaceted impact of AI on student motivation, drawing on meta-analytical data and student perceptions to provide a clear picture of the current academic landscape.

Bibliografia

  1. IMPACT OF ARTIFICIAL INTELLIGENCE PERSONALIZED LEARNING ON STUDENT MOTIVATION AND ACADEMIC PERFORMANCE (2025)
    Hassan Imran
    Link DOI
  2. Impact of Artificial Intelligence Tools on Learning Motivation in University EMI Courses: A Network Meta-Analysis (2026)
    Liwei Hsu, Yu-Chun Wang
    Link DOI
  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.
    Link DOI

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