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| 題 名 | Empowering Elementary Learning: Utilizing Large Language Models to Craft Tailored Textbooks with Expert Insight=賦權國小國語文學習:利用大型語言模型生成符合專業觀點的客製化教材 |
|---|---|
| 作 者 | 連大成; 古貿昌; 王伯雅; 陳韋伶; 謝舒凱; | 書刊名 | 圖書資訊學刊 |
| 卷 期 | 23:2 2025.12[民114.12] |
| 頁 次 | 頁145-183 |
| 分類號 | 312.83 |
| 關鍵詞 | 大型語言模型; 國語文教學; 教材自動生成; 語言學習; 上下文學習; Large language models; Chinese language education; Automatic textbook generation; Language learning; In-context learning; |
| 語 文 | 英文(English) |
| DOI | 10.6182/jlis.202512_23(2).145 |
| 中文摘要 | 大型語言模型(LLMs)近年憑藉其出色的零樣本(zero-shot)或少樣本(few-shot)學習能力,在各領域的研究中備受矚目,並成為許多專業工作流程中導入AI應用的關鍵技術。立基於深度語言學分析,本研究利用大型語言模型(GPT-4),針對臺灣國小學童自動生成客製化的國語文課文與生字練習。實驗初步結果顯示,模型不僅能產出符合指定年級程度的文本,其品質亦具有高度發展潛力。本研究的主要貢獻在於:首先,我們開創性地對臺灣現行國語文教科書進行量化分析;其次,我們設計了一套適用於不同學習程度的提示詞(prompts),成功利用大型語言模型為中文母語者自動生成教材。研究中亦包含模型生成內容與臺灣教育專家編寫版本之間的量化與質性比較分析。 |
| 英文摘要 | Large language models (LLMs) have in recent years spurred research across various sectors, owing to their remarkable zero-shot or few-shot performance. This capability has become indispensable for individuals seeking to integrate these language models into their workflows effectively. In this paper, based on in-depth linguistic analyses, we explore the application of an LLM, specifically GPT-4, in generating Chinese language textbooks tailored for grade school students. This encompasses the creation of main lesson texts alongside accompanying Chinese character exercises. Experimental results suggest that the LLM-generated textbook lessons are a viable research direction. The initial outcomes demonstrate the ability of LLM to generate texts of satisfactory quality appropriate for a specified grade level. The contributions of this work include pioneering the quantitative analysis of Chinese language textbooks for native speakers in Taiwan and leveraging an LLM to automatically generate textbook content and accompanying Chinese character exercises targeted at native Chinese speakers, which is a novel approach facilitated by the development of prompts tailored to different language learning levels. The study also conducts quantitative and qualitative comparisons between machine-generated lessons and those developed by educational professionals in Taiwan. |
本系統中英文摘要資訊取自各篇刊載內容。