AI RESEARCH

When LLM Judge Scores Look Good but Best-of-N Decisions Fail

arXiv CS.AI

ArXi:2603.12520v1 Announce Type: cross Large language models are often used as judges to score candidate responses, then validated with a single global metric such as correlation with reference labels. This can be misleading when the real deployment task is best-of-n selection within a prompt. In a 5,000-prompt best-of-4 benchmark from Chatbot Arena, a judge with moderate global correlation (r = 0.47) captures only 21.0% of the improvement that perfect selection would achieve over random choice.