ELion: An Intelligent Chinese Composition Tutoring System Based on Large Language Models

Chanjin Zheng, Shaoyang Guo, Wei Xia, Shaoguang Mao
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Abstract

For a long time, Chinese language teachers in primary and secondary schools have been confronting challenges of heavy workload, low efficiency, and difficulty in improving the quality of composition evaluations. This article introduces “ELion”, an intelligent Chinese composition tutoring system based on large language models. The system utilizes deep linguistic features to evaluate the quality of compositions and provide interpretable feedback. By discussing the overall design, evaluation framework structure, and scoring algorithm principles of ELion, this paper addresses the theoretical, technical, and engineering issues of intelligent evaluation of Chinese compositions in the educational context. Small-scale experiments conducted in schools demonstrate that ELion performs well in language error detection, rhetorical techniques, and the expression of actions and emotions. It can basically meet the needs of Chinese language teaching in primary and secondary schools. In the future, ELion will further develop algorithms for ”instruction-learning-evaluation” alignment assessment, and personalized precise feedback generation, based on the GPT model. This will improve the evaluation effectiveness in topic analysis, text structure, and genuine emotional expression. Additionally, systematic field experiments for the system will be conducted to explore the application of artificial intelligence in education.
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ELion:基于大语言模型的智能作文辅导系统
长期以来,中小学语文教师面临着工作量大、效率低、作文评价质量难以提高的挑战。本文介绍了基于大型语言模型的智能作文辅导系统“ELion”。该系统利用深层语言特征来评估作文的质量,并提供可解释的反馈。本文通过对ELion的总体设计、评估框架结构和评分算法原理的讨论,探讨了教育环境下语文作文智能评估的理论、技术和工程问题。在学校进行的小规模实验表明,ELion在语言错误检测、修辞技巧、行为和情绪表达方面表现出色。基本能满足中小学语文教学的需要。未来,ELion将进一步开发基于GPT模型的“教学-学习-评估”对齐评估和个性化精确反馈生成算法。这将提高在话题分析、文本结构和真实情感表达方面的评价效果。此外,将对该系统进行系统的现场实验,探索人工智能在教育中的应用。
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