CLAIFeb 3, 2025

Classic4Children: Adapting Chinese Literary Classics for Children with Large Language Model

arXiv:2502.01090v112 citationsh-index: 12NAACL
Originality Incremental advance
AI Analysis

This work addresses the problem of making culturally significant but complex Chinese literature accessible to children, though it is incremental as it builds on existing LLM techniques for a specific domain.

The paper tackles the challenge of adapting Chinese literary classics for children by introducing a child-friendly literary adaptation task and proposing InstructChild, a method that fine-tunes large language models with children's reading preferences, resulting in significant improvements in automatic and human evaluation metrics.

Chinese literary classics hold significant cultural and educational value, offering deep insights into morality, history, and human nature. These works often include classical Chinese and complex narratives, making them difficult for children to read. To bridge this gap, we introduce a child-friendly literary adaptation (CLA) task to adapt the Chinese literary classic into engaging and accessible text for children. However, recent large language models (LLMs) overlook children's reading preferences (\ie, vivid character portrayals, concise narrative structures, and appropriate readability), which poses challenges in CLA. In this paper, we propose a method called InstructChild, which augments the LLM with these preferences for adaptation. Specifically, we first obtain the characters' personalities and narrative structure as additional information for fine-grained instruction tuning. Then, we devise a readability metric as the reward to align the LLM with the children's reading level. Finally, a lookahead decoding strategy is applied to improve the readability of the generated text during inference. To support the evaluation of CLA task, we construct the Classic4Children dataset, which comprises both the original and child-friendly versions of the Four Great Classical Novels of Chinese literature. Experimental results show that our InstructChild significantly improves automatic and human evaluation performance.

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