AI-Powered Adaptive Learning Systems and Educational Inequality Reduction
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ID: 311455
2025
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Abstract
This work discusses the role played by AI-based adaptive learning systems in reducing the problem of educational inequality by providing personalized learning experiences tailored to the unique requirements of each student. We consider the effectiveness of such systems in various learning settings, with particular consideration of the degree to which it can influence student engagement, learning outcomes, and access to resources. We show that AI-based platforms have increased learning outcomes, particularly with marginalized groups, by customizing learning models and progress to the needs and learning styles of each person. The statistics indicate that students with low income backgrounds improved greatly in learning institutions when they utilized AI-based learning tools. Also, the introduction of AI to traditional learning environments improved equal opportunities to high-quality education, therefore, narrowing the gap between different groups of students. Another thing this study demonstrates is that it is essential to continue changing the system and receive feedback in the real-time to improve the learning paths and make education more equitable. The findings indicate that AI-based systems can transform education to offer scalable, personalized solutions that can cope with the needs of students throughout the globe. This will render education accessible to all.
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| Authors | Ayesha Noor, Farhan Qureshi |
| Journal | Social Thought and Policy Review |
| Year | 2025 |
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| Keywords | Keywords not found |
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