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Impact of Artificial Intelligence Tools on Teaching Effectiveness, Student Engagement, and Learning Achievement in Higher Education Institutions
0
Zitationen
4
Autoren
2026
Jahr
Abstract
Artificial intelligence (AI) tools, including generative AI and large language models, are transforming higher education by enhancing teaching effectiveness through administrative automation, personalized instruction, and real-time feedback, while shifting faculty roles toward facilitation and mentorship. This review synthesizes evidence on how AI influences student engagement via adaptive scaffolding, interactive learning, and motivational frameworks (PMAISE, Self-Determination Theory), and improves learning achievement with moderate to large effect sizes in meta-analyses, particularly when supporting self-regulated and inquiry-based approaches. AI-driven learning analytics enable early intervention and predictive modeling for retention. Disciplinary differences show STEM fields emphasizing technical skills while humanities focus on ethical and conceptual applications. Challenges include ethical concerns (bias, privacy, and academic integrity), cognitive over-reliance, and the need for robust governance frameworks. Successful integration requires human-centered design, faculty development, and policies that balance innovation with academic values, ultimately fostering "AI Capital" for improved graduate employability in an AI-shaped economy.
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