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CARE: Confounder-Aware Aggregation for Reliable LLM Evaluation

About

LLM-as-a-judge ensembles are the standard paradigm for scalable evaluation, but their aggregation mechanisms suffer from a fundamental flaw: they implicitly assume that judges provide independent estimates of true quality. However, in practice, LLM judges exhibit correlated errors caused by shared latent confounders -- such as verbosity, stylistic preferences, or training artifacts -- causing standard aggregation rules like majority vote or averaging to provide little gain or even amplify systematic mistakes. To address this, we introduce CARE, a confounder-aware aggregation framework that explicitly models LLM judge scores as arising from both a latent true-quality signal and shared confounding factors. Rather than heuristically re-weighting judges, CARE separates quality from confounders without access to ground-truth labels. We provide theoretical guarantees for identifiability and finite-sample recovery under shared confounders, and we quantify the systematic bias incurred when aggregation models omit confounding latent factors. Across 12 public benchmarks spanning continuous scoring, binary classification, and pairwise preference settings, CARE improves aggregation accuracy, reducing error by up to 26.8\%. Code is released in \href{https://github.com/SprocketLab/CARE}{https://github.com/SprocketLab/CARE}.

Jitian Zhao, Changho Shin, Tzu-Heng Huang, Satya Sai Srinath Namburi GNVV, Frederic Sala• 2026

Related benchmarks

TaskDatasetResultRank
Comment ClassificationCivil Comments
Accuracy77.8
30
Binary/Pairwise ClassificationChatbot Arena
Accuracy58
9
Binary/Pairwise ClassificationPKU-BETTER
Accuracy77.9
9
Binary/Pairwise ClassificationSHP
Accuracy69.5
9
Binary/Pairwise ClassificationSummarize
Accuracy81.4
9
Binary/Pairwise ClassificationPKU-SAFER
Accuracy73.1
9
scoringASSET
MAE27.629
5
scoringFeedbackQA
MAE0.73
5
scoringReview-5K
MAE1.957
5
scoringSummarize
MAE1.325
5
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