LLM Reasoning 相关度: 7/10

When AI Meets Early Childhood Education: Large Language Models as Assessment Teammates in Chinese Preschools

Xingming Li, Runke Huang, Yanan Bao, Yuye Jin, Yuru Jiao, Qingyong Hu
arXiv: 2603.24389v1 发布: 2026-03-25 更新: 2026-03-25

AI 摘要

利用大语言模型评估幼儿师生互动质量,提高评估效率并实现常态化监测。

主要贡献

  • 构建大规模中文幼儿师生互动数据集TEPE-TCI-370h
  • 开发基于LLM的互动评估框架Interaction2Eval
  • 验证AI辅助评估的效率提升和可行性

方法论

构建数据集并标注,利用LLM框架处理语音识别和歧义问题,通过专家评估对比验证。

原文摘要

High-quality teacher-child interaction (TCI) is fundamental to early childhood development, yet traditional expert-based assessment faces a critical scalability challenge. In large systems like China's-serving 36 million children across 250,000+ kindergartens-the cost and time requirements of manual observation make continuous quality monitoring infeasible, relegating assessment to infrequent episodic audits that limit timely intervention and improvement tracking. In this paper, we investigate whether AI can serve as a scalable assessment teammate by extracting structured quality indicators and validating their alignment with human expert judgments. Our contributions include: (1) TEPE-TCI-370h (Tracing Effective Preschool Education), the first large-scale dataset of naturalistic teacher-child interactions in Chinese preschools (370 hours, 105 classrooms) with standardized ECQRS-EC and SSTEW annotations; (2) We develop Interaction2Eval, a specialized LLM-based framework addressing domain-specific challenges-child speech recognition, Mandarin homophone disambiguation, and rubric-based reasoning-achieving up to 88% agreement; (3) Deployment validation across 43 classrooms demonstrating an 18x efficiency gain in the assessment workflow, highlighting its potential for shifting from annual expert audits to monthly AI-assisted monitoring with targeted human oversight. This work not only demonstrates the technical feasibility of scalable, AI-augmented quality assessment but also lays the foundation for a new paradigm in early childhood education-one where continuous, inclusive, AI-assisted evaluation becomes the engine of systemic improvement and equitable growth.

标签

LLM Early Childhood Education Assessment Teacher-Child Interaction

arXiv 分类

cs.CL cs.AI cs.CY