Yingfei Xiong


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2025

pdf bib
Grammar-Based Code Representation: Is It a Worthy Pursuit for LLMs?
Qingyuan Liang | Zhao Zhang | Zeyu Sun | Zheng Lin | Qi Luo | Yueyi Xiao | Yizhou Chen | Yuqun Zhang | Haotian Zhang | Lu Zhang | Bin Chen | Yingfei Xiong
Findings of the Association for Computational Linguistics: ACL 2025

Grammar serves as a cornerstone in programming languages and software engineering, providing frameworks to define the syntactic space and program structure. Existing research demonstrates the effectiveness of grammar-based code representations in small-scale models, showing their ability to reduce syntax errors and enhance performance. However, as language models scale to the billion level or beyond, syntax-level errors become rare, making it unclear whether grammar information still provides performance benefits. To explore this, we develop a series of billion-scale GrammarCoder models, incorporating grammar rules in the code generation process. Experiments on HumanEval (+) and MBPP (+) demonstrate a notable improvement in code generation accuracy. Further analysis shows that grammar-based representations enhance LLMs’ ability to discern subtle code differences, reducing semantic errors caused by minor variations. These findings suggest that grammar-based code representations remain valuable even in billion-scale models, not only by maintaining syntax correctness but also by improving semantic differentiation.