AICLJan 12, 2025

Fine-tuning ChatGPT for Automatic Scoring of Written Scientific Explanations in Chinese

arXiv:2501.06704v19 citationsh-index: 16J Sci Educ Technol
Originality Synthesis-oriented
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This addresses the resource-intensive challenge of scoring student-written scientific explanations in Chinese, offering a domain-specific application of LLMs for educational assessment, though it is incremental as it adapts existing methods to a new language context.

The study fine-tuned ChatGPT to automatically score Chinese scientific explanations, finding it effective but with accuracy varying by reasoning complexity: negative correlation for lower-level responses and positive for higher-level ones, influenced by linguistic features like simplicity and comprehensiveness.

The development of explanations for scientific phenomena is essential in science assessment, but scoring student-written explanations remains challenging and resource-intensive. Large language models (LLMs) have shown promise in addressing this issue, particularly in alphabetic languages like English. However, their applicability to logographic languages is less explored. This study investigates the potential of fine-tuning ChatGPT, a leading LLM, to automatically score scientific explanations written in Chinese. Student responses to seven scientific explanation tasks were collected and automatically scored, with scoring accuracy examined in relation to reasoning complexity using the Kendall correlation. A qualitative analysis explored how linguistic features influenced scoring accuracy. The results show that domain-specific adaptation enables ChatGPT to score Chinese scientific explanations with accuracy. However, scoring accuracy correlates with reasoning complexity: a negative correlation for lower-level responses and a positive one for higher-level responses. The model overrates complex reasoning in low-level responses with intricate sentence structures and underrates high-level responses using concise causal reasoning. These correlations stem from linguistic features--simplicity and clarity enhance accuracy for lower-level responses, while comprehensiveness improves accuracy for higher-level ones. Simpler, shorter responses tend to score more accurately at lower levels, whereas longer, information-rich responses yield better accuracy at higher levels. These findings demonstrate the effectiveness of LLMs in automatic scoring within a Chinese context and emphasize the importance of linguistic features and reasoning complexity in fine-tuning scoring models for educational assessments.

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