AI-Driven Virtual Teacher for Enhanced Educational Efficiency: Leveraging Large Pretrain Models for Autonomous Error Analysis and Correction

Tianlong Xu, Yi-Fan Zhang, Zhendong Chu, Shen Wang, Qingsong Wen
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Abstract

Students frequently make mistakes while solving mathematical problems, and traditional error correction methods are both time-consuming and labor-intensive. This paper introduces an innovative \textbf{V}irtual \textbf{A}I \textbf{T}eacher system designed to autonomously analyze and correct student \textbf{E}rrors (VATE). Leveraging advanced large language models (LLMs), the system uses student drafts as a primary source for error analysis, which enhances understanding of the student's learning process. It incorporates sophisticated prompt engineering and maintains an error pool to reduce computational overhead. The AI-driven system also features a real-time dialogue component for efficient student interaction. Our approach demonstrates significant advantages over traditional and machine learning-based error correction methods, including reduced educational costs, high scalability, and superior generalizability. The system has been deployed on the Squirrel AI learning platform for elementary mathematics education, where it achieves 78.3\% accuracy in error analysis and shows a marked improvement in student learning efficiency. Satisfaction surveys indicate a strong positive reception, highlighting the system's potential to transform educational practices.
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人工智能驱动的虚拟教师,提高教育效率:利用大型预训练模型进行自主错误分析和纠正
学生在解决数学问题时经常犯错,而传统的纠错方法既耗时又耗力。本文介绍了一种创新的虚拟(textbf{V}irtual\textbf{A}I (textbf{T})教师系统,该系统旨在自主分析和纠正学生的错误(VATE)。该系统利用先进的大型语言模型(LLM),将学生草稿作为错误分析的主要来源,从而增强了对学生学习过程的理解。它结合了复杂的提示工程,并维护一个错误库,以减少计算开销。人工智能驱动的系统还具有实时对话组件,可实现高效的学生互动。与传统的纠错方法和基于机器学习的纠错方法相比,我们的方法具有显著优势,包括降低教育成本、高可扩展性和更好的通用性。该系统已部署在松鼠小学数学教育人工智能学习平台上,其错误分析准确率达到78.3%,学生学习效率明显提高。满意度调查显示,该系统受到了强烈的欢迎,彰显了其改变教育实践的潜力。
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