MarkTechPost@AI 2024年10月09日
Researchers at Stanford University Introduce Tutor CoPilot: A Human-AI Collaborative System that Significantly Improves Real-Time Tutoring Quality for Students
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斯坦福大学研发Tutor CoPilot,这是个人工智能协作系统,能在实时辅导中为导师提供指导。该系统可提升教学质量,解决传统辅导培训的诸多问题,且成本较低,效果显著。

💡Tutor CoPilot旨在为实时辅导中的导师提供决策过程的复制,通过提供可行且基于情境的专家建议,帮助经验较少的导师提供高质量教学,与最佳教学实践紧密结合。

🎯该系统嵌入虚拟辅导平台,分析会话情境和课程主题,提供即时建议,如引导问题、提示支持解题等,且导师可根据学生需求进行个性化调整,平台还设有保障用户隐私的安全机制。

📈Tutor CoPilot在大规模随机对照试验中表现出色,使用该系统的导师所辅导的学生在数学主题掌握上比对照组高四个百分点,对初始评价较低的导师,其学生的掌握率提高了九个百分点,且每年每位导师仅需20美元。

📋研究发现该系统常鼓励导师采用高质量教学策略,如促使学生解释推理、用引导性问题促进深入理解,但偶尔存在建议需符合年级水平的问题。

Integrating Artificial Intelligence (AI) tools in education has shown great potential to enhance teaching methods and learning experiences, especially where access to experienced educators is limited. One prominent AI-based approach is using Language Models (LMs) to support tutors in real time. Such systems can provide expert-like suggestions that help tutors improve student engagement and performance. By equipping novice educators with real-time guidance, AI tools have the potential to bridge the expertise gap in education and create a more equitable learning environment. This is particularly crucial in classrooms with diverse student abilities and educational backgrounds.

The fundamental problem in education is the high cost and limited scalability of traditional tutoring training programs. Comprehensive professional development sessions can cost up to $3,300 per teacher annually, making it challenging for schools with tight budgets to offer quality training. These programs often require tutors to invest significant time outside their teaching hours, making them impractical for part-time educators. Also, many professional development programs need to be aligned with the specific needs of novice tutors, which means they fail to address the dynamic, real-time challenges faced during live tutoring sessions. Consequently, many tutors develop their skills on the job, leading to inconsistent teaching quality and missed student learning opportunities.

Educators have relied on professional development workshops and training seminars to improve their skills. However, these methods are not always effective due to their static nature, which doesn’t cater to the real-time interaction needs of teachers. To address this, some educators have tried using online forums and support networks, but these lack the structured feedback necessary for professional growth. Also, adapting generic training programs for specific educational settings remains challenging, and many tutors, particularly those working in under-served communities, find it difficult to implement these strategies effectively.

Researchers from Stanford University developed Tutor CoPilot, a human-AI collaborative system designed to provide real-time guidance to tutors during live tutoring sessions. Tutor CoPilot aims to replicate expert educators’ decision-making process by providing actionable and context-specific expert-like suggestions. The system uses think-aloud protocols captured from experienced tutors to train the AI model to deliver feedback in real-time. This innovative approach enables less experienced tutors to deliver high-quality instruction that closely aligns with best practices in teaching.

Tutor CoPilot works by embedding itself within a virtual tutoring platform, where tutors can activate it during sessions for immediate assistance. The AI system then analyzes the conversation context and the lesson topic to offer suggestions that the tutor can implement instantly. Suggestions include asking guiding questions to encourage student reasoning, providing hints to support problem-solving, and affirming correct responses. Tutor CoPilot allows tutors to personalize these suggestions, making it comfortable to adapt to the unique needs of each student. The platform also includes a safety mechanism that de-identifies student and tutor names, ensuring user privacy during interactions.

The performance of Tutor CoPilot was tested in a large-scale, randomized, controlled trial involving 900 tutors and 1,800 students from Title I schools. The results were significant: students working with tutors who used Tutor CoPilot were four percentage points more likely to master mathematics topics than the control group, where only 62% of students achieved mastery. Interestingly, the positive impact was even greater for tutors initially rated less effective. For these tutors, the mastery rate increased by nine percentage points, closing the gap between less experienced and more experienced educators. The study also found that Tutor CoPilot costs only $20 per tutor annually, making it a cost-effective alternative to traditional training programs.

Key findings revealed that Tutor CoPilot frequently encouraged tutors to employ high-quality pedagogical strategies. For example, tutors using the system were more likely to prompt students to explain their reasoning, use guiding questions to promote deeper understanding and avoid simply giving away the answers. Such strategies are aligned with best practices in effective teaching and have been shown to improve student outcomes significantly. Also, interviews with tutors indicated that they found the system helpful in breaking down complex concepts. However, occasional issues with the tool provided suggestions that needed grade-level appropriateness.

Key Takeaways from the research on Tutor CoPilot:

In conclusion, the study’s results show that integrating human-AI collaborative systems like Tutor CoPilot in education can significantly improve the quality of teaching, particularly in underserved communities. The research team demonstrated that Tutor CoPilot enhances novice tutors’ effectiveness and provides a scalable solution for improving educational outcomes across diverse student populations. At a fraction of the cost of traditional training programs, Tutor CoPilot offers a promising pathway for making high-quality education accessible to all students.


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Tutor CoPilot 人工智能协作 教育质量 教学策略 成本效益
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