Syntax Is Not Enough: An Empirical Study of Small Transformer Models for Neural Code Repair

cs.SE arXiv:2512.22216
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Abstract

Automated program repair using neural models has shown promising results on benchmark datasets, yet practical deployment remains limited. In this study, we examine whether a small transformer model can meaningfully repair real-world Java bugs and whether syntactic correctness is a reliable proxy for semantic correctness. We fine-tune CodeT5-small (60.5M parameters) on 52,364 Java bug-fix pairs from CodeXGLUE and evaluate both token-level performance and syntactic validity using AST parsing. While the model converges cleanly and achieves high grammatical correctness, producing syntactically valid Java code in approximately ninety-four percent of cases, it fails to generate correct repairs under exact-match evaluation, achieving zero exact matches. In approximately eighty percent of cases, the model reproduces the buggy input verbatim.

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