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教育研究中应用AI合成数据的机遇与挑战OA

Opportunities and Challenges of Applying AI Synthetic Data in Educational Research

中文摘要英文摘要

随着大语言模型的兴起,AI 合成数据作为重塑教育研究证据来源的新型工具备受关注.然而,这一从统计学领域跨越至教育科研的新兴实践,引发了关于科学证据性质变化的深刻争议,其应用边界与潜在风险尚不明晰.文章追溯了合成数据从统计披露控制到大模型生成的演进脉络,剖析了大模型如何通过世界模型、心理理论模拟等机制重塑合成数据的生成逻辑,并系统分析了其在量化、质性、实验仿真、评估研究等场景中的应用形态.文章还揭示了代表性失真、认知机制差异、伦理规范缺失及质量评估困难等核心挑战,强调合成数据有效应用的情境依赖性,呼吁建立适应人机协同研究的新认识论体系,审慎、负责任地应用这一新兴工具.

With the prevalence of large language models(LLMs),AI-synthesized data has attracted extensive attention as an innovative tool reshaping the evidence base of educational research.However,this emerging practice,expanded from statistics to educational research,has sparked profound controversies over the changing nature of scientific evidence,with its application boundaries and potential risks remaining unclear.This paper reviewed the evolutionary trajectory of the synthetic data from statistical disclosure to LLM generation,analyzing how LLMs reshaped the generation logic of synthetic data through world models,theory-of-mind simulation and other mechanisms,and systematically explored its application forms across quantitative,qualitative,experimental simulation,evaluative research and other scenarios.Furthermore,it identified core challenges including representational distortion,cognitive mechanism discrepancies,inadequate ethical norms,and difficulties in quality assessment.This study highlighted the context dependency of the effective application of synthetic data,and called for constructing a new epistemological system adapted to human-machine collaborative research to promote the prudent and responsible application of this emerging tool.

褚乐阳;仇星月

扬州大学 新闻与传媒学院,江苏 扬州 225009广东第二师范学院 教师教育学院,广东 广州 510310

社会科学

合成数据教育研究大语言模型数据生成伦理

synthetic dataeducational researchlarge language modelsdata generationethics

《现代教育技术》 2026 (5)

16-26,11

本文为2025年度广东省哲学社会科学规划青年项目"基于大语言模型的跨学科教学设计的理论与实践研究"(GD25YJY39)的阶段性研究成果.

10.3969/j.issn.1009-8097.2026.05.002

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