AI RESEARCH
Grounding the Score: Explicit Visual Premise Verification for Reliable Vision-Language Process Reward Models
arXiv CS.AI
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ArXi:2603.16253v1 Announce Type: cross Vision-language process reward models (VL-PRMs) are increasingly used to score intermediate reasoning steps and rerank candidates under test-time scaling. However, they often function as black-box judges: a low step score may reflect a genuine reasoning mistake or simply the verifier's misperception of the image. This entanglement between perception and reasoning leads to systematic false positives (rewarding hallucinated visual premises) and false negatives (penalizing correct grounded statements), undermining both reranking and error localization. We