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

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חיבור (Essay)

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

מגיש/ה:

Group

שם מלא

מנחה:

פרופ׳/ד״ר שם מלא

עיר 2026

תוכן עניינים

The Mechanism of Personalized Learning and Competence
Language Acquisition and Motivation in EMI Contexts
The Educator’s Absence and the Risk of Disconnection
Intrinsic vs. Extrinsic Drivers in the AI Era
Institutional Responsibility and the Future of Engagement
Conclusion
Bibliography

מבוא

The quiet hum of a laptop in a college library now frequently signals more than just word processing; it represents a direct interaction between a student and a sophisticated linguistic model. As American colleges grapple with the sudden ubiquity of generative artificial intelligence, the conversation has shifted from a narrow focus on academic integrity to a broader inquiry into how these tools alter the very desire to learn. Motivation is the engine of higher education, yet it is a fragile construct influenced by a student's sense of competence, autonomy, and relatedness. The introduction of tools like ChatGPT, Grammarly, and specialized research assistants has created a paradox in the classroom. On one hand, AI reduces the cognitive friction associated with complex tasks, potentially boosting a student’s confidence. On the other, the automation of thought risks stripping away the struggle that often gives academic work its meaning. Understanding this impact requires an examination of how personalized learning platforms, language supports, and the changing role of the professor intersect to either fuel or dampen the student's inner drive. This essay argues that while AI significantly enhances digital literacy and provides a sense of immediate competence, its long-term success in fostering motivation remains contingent on maintaining human connection and intentional pedagogical design.

רשימת מקורות

  1. Innovation in the Use of Artificial Intelligence in Improving Learning Motivation in Student Final Project Completion (2025)
    Ananta Sany Ningtyas, Yetri Yetri, Vandan Wiliyanti
    DOI Link
  2. Understanding knowledge management engagement, learning motivation and effectiveness in the age of generative artificial intelligence (2025)
    Diana Korayim, Rahul Bodhi, Nourah O. Alshaghdali et al.
    DOI Link
  3. IMPACT OF ARTIFICIAL INTELLIGENCE PERSONALIZED LEARNING ON STUDENT MOTIVATION AND ACADEMIC PERFORMANCE (2025)
    Hassan Imran
    DOI Link

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חיבור (Essay)

CHE/Malag Guidelines (Council for Higher Education)

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