AI RESEARCH

Instance-Optimal Estimation with Multiple LLM Judges on a Budget

arXiv CS.LG

ArXi:2605.23362v1 Announce Type: new Evaluating large language models increasingly relies on LLM-as-a-judge protocols, but such evaluations remain costly: different judges have different prices and reliabilities, and the difficulty of each prompt-response pair can vary substantially. This raises a basic allocation question: under a fixed budget, how should one distribute evaluation queries across heterogeneous judges and instances to obtain the most accurate score estimates? We formalize this question as *budgeted heteroskedastic multi-judge estimation.