CollabEval: Statistically Efficient Collaborative Model Evaluation via Matrix Completion
摘要
Evaluating generative AI models is a routine, but resource-intensive, process that is conducted over and over again during the course of model development. In this work, we propose Collaborative Evaluation (CollabEval), a simple, effective, and principled method for exploiting dependencies between historical runs of different models on the same tasks to improve statistical efficiency. Specifically, our approach treats model evaluation as a matrix completion problem over an matrix of evaluation scores, where is the total number of models and is the total number of evaluation prompts. We assume that a subset of these models are targeted for evaluation. For these target models only a small fraction, , of prompts has been annotated with evaluation scores. Leveraging recent results in prediction-powered inference, we build a low-rank approximation of the score matrix, and use the reconstructed values as control variates in a manner that guarantees unbiased estimates of the true evaluation metric mean, in addition to statistically valid confidence intervals. Empirically, across a wide range of datasets, models, and sparsity levels , we find that CollabEval substantially reduces the mean confidence interval size, and the mean squared error of the point estimate, compared to baseline methods at the same annotation budget.
引用
@article{arxiv.2607.05046,
title = {CollabEval: Statistically Efficient Collaborative Model Evaluation via Matrix Completion},
author = {Adam Fisch and Daniel Deutsch and Joshua Maynez and Alekh Agarwal and Jonathan Berant and William Cohen and Amir Globerson and Jacob Eisenstein},
journal= {arXiv preprint arXiv:2607.05046},
year = {2026}
}