中文

CollabEval: Statistically Efficient Collaborative Model Evaluation via Matrix Completion

机器学习 2026-07-06 v1

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 M×NM \times N matrix of evaluation scores, where MM is the total number of models and NN is the total number of evaluation prompts. We assume that a subset of these MM models are targeted for evaluation. For these target models only a small fraction, pp, 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 pp, 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}
}