AI RESEARCH
VERDI: Single-Call Confidence Estimation for Verification-Based LLM Judges via Decomposed Inference
arXiv CS.LG
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ArXi:2605.11334v1 Announce Type: new LLM-as-Judge systems are widely deployed for automated evaluation, yet practitioners lack reliable methods to know when a judge's verdict should be trusted. Token log-probabilities, the standard post-hoc confidence signal, are unavailable for many commercial LLMs and, even when accessible, saturate above 0.999 with structured JSON output. On three public benchmarks, VERDI achieves AUROC 0.72-0.91 on GPT-4.1-mini and 0.66-0.80 on GPT-5.4-mini.