AI RESEARCH
CriterAlign: Criterion-Centric Rationale Alignment for Code Preference Judging
arXiv CS.AI
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ArXi:2605.19665v1 Announce Type: cross Pairwise human preference prediction is central to evaluating code-generation systems, where quality often depends on task-specific trade-offs beyond functional correctness. While rubric-based LLM judges improve interpretability by decomposing evaluation into explicit criteria, most existing pipelines remain pointwise: they score each response independently and derive preferences by comparing aggregated scores. We show that this design is poorly matched to pairwise code preference prediction and can underperform a strong monolithic judge.