Analyzing the Effectiveness of AI-Powered Adaptive Learning Platforms in Mathematics Education

Marianus Dabingaya
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Abstract

This study looks into the effectiveness of AI-powered adaptive learning systems in mathematics education, with the goal of discovering how they affect student engagement and learning results. The study assessed engagement metrics and pre- and post-assessment scores among students in both experimental and control groups using a quantitative research technique. The results showed that the experimental group, which used the AI-powered platform, had greater engagement metrics, such as interaction frequency and length, than the control group. Furthermore, the experimental group's post-assessment scores increased significantly, showing better mathematical competency. These findings are consistent with previous studies, emphasizing the individualized learning routes enabled by AI technologies. This study highlights the potential of AI-powered adaptive learning systems to modify existing educational paradigms by comparing and contrasting with earlier studies. The ramifications of these findings for educators, politicians, and researchers are examined, highlighting the importance of intelligent technological integration in education while also addressing ethical concerns. While this study provides useful insights, it also admits limits and offers future research directions. These findings provide useful information for utilizing AI's potential to enhance mathematics education and pave the path for a more effective and inclusive learning environment in the age of technology-driven education.
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人工智能自适应学习平台在数学教育中的有效性分析
本研究探讨了人工智能自适应学习系统在数学教育中的有效性,目的是发现它们如何影响学生的参与度和学习结果。该研究使用定量研究技术评估了实验组和对照组学生的参与指标以及评估前和评估后的分数。结果显示,使用人工智能平台的实验组比对照组拥有更高的参与度指标,如互动频率和时长。此外,实验组的评估后得分显著提高,表现出更好的数学能力。这些发现与之前的研究一致,强调了人工智能技术带来的个性化学习路线。本研究通过与早期研究的比较和对比,强调了人工智能驱动的自适应学习系统修改现有教育范式的潜力。这些发现对教育工作者、政治家和研究人员的影响进行了研究,强调了智能技术集成在教育中的重要性,同时也解决了伦理问题。虽然这项研究提供了有用的见解,但它也承认局限性,并提供了未来的研究方向。这些发现为利用人工智能的潜力加强数学教育提供了有用的信息,并为在技术驱动的教育时代创造更有效、更包容的学习环境铺平了道路。
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