AI RESEARCH

LLM Evaluation as Tensor Completion: Low Rank Structure and Semiparametric Efficiency

arXiv CS.AI

ArXi:2604.05460v1 Announce Type: cross Large language model (LLM) evaluation platforms increasingly rely on pairwise human judgments. These data are noisy, sparse, and non-uniform, yet leaderboards are reported with limited uncertainty quantification. We study this as semiparametric inference for a low-rank latent score tensor observed through pairwise comparisons under Bradley-Terry-Luce-type models. This places LLM evaluation in a new tensor completion setting with structured observations, non-uniform sampling, and pairwise contrasts.