This study investigates the potential of artificial intelligence (AI) in personalizing learning for students in remote Chinese regions, a context characterized by significant educational disparities and resource scarcity. Using a quantitative quasi-experimental design with a pre-test/post-test control group, the research evaluated the impact of an AI-powered personalized learning platform over a six-month period. The sample consisted of middle school students and teachers in an underserved rural area. Key metrics included student academic performance, engagement levels, and teacher-reported workload and technology confidence. The findings reveal a statistically significant positive effect of the AI intervention. Students in the experimental group showed a remarkable 26.2% average score improvement, nearly double that of the control group. This was accompanied by a significant increase in student engagement, as evidenced by a higher post-test score on a motivational scale. Concurrently, teachers in the AI group reported a substantial reduction in time spent on grading and a marked increase in their confidence in using educational technology. The results suggest that AI offers a viable and effective strategy for bridging educational resource gaps, enhancing student outcomes, and empowering educators in geographically isolated and under-resourced environments. The study provides a strong empirical foundation for the strategic integration of AI into educational policy aimed at promoting equity.
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A Sat, study studied this question.
www.synapsesocial.com/papers/68a36f900a429f79733328c7 — DOI: https://doi.org/10.53797/ujssh.v4i2.22.2025
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