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Main Authors: Bonagiri, Akash, Anderias, Gerard Janno, Patil, Saee, Lai, Angelina, Borkar, Devang, Kang, Gezheng, Gandhi, Ishant, Rafatirad, Setareh, Homayoun, Houman
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.02122
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author Bonagiri, Akash
Anderias, Gerard Janno
Patil, Saee
Lai, Angelina
Borkar, Devang
Kang, Gezheng
Gandhi, Ishant
Rafatirad, Setareh
Homayoun, Houman
author_facet Bonagiri, Akash
Anderias, Gerard Janno
Patil, Saee
Lai, Angelina
Borkar, Devang
Kang, Gezheng
Gandhi, Ishant
Rafatirad, Setareh
Homayoun, Houman
contents Human evaluation remains the primary standard for assessing modern AI systems, yet annotator disagreement, bias, and variability make system rankings fragile under standard majority vote aggregation. Majority vote discards annotator reliability and item-level ambiguity, often yielding unstable comparisons across annotator subsets. We introduce STABLEVAL, a disagreement-aware evaluation framework that models latent item correctness and annotator-specific confusion patterns to produce posterior expected item credit and calibrated agent-level scores. Unlike label-denoising approaches such as Dawid-Skene, STABLEVAL is explicitly designed for stable and uncertainty-aware system evaluation rather than hard label recovery. We formalize ranking stability as a first-class evaluation objective and analyze how aggregation methods preserve or distort underlying annotator behavior. Across controlled synthetic experiments and multiple real-world human-annotated benchmarks, majority vote exhibits increasing score error and ranking instability under annotator heterogeneity and adversarial noise, while STABLEVAL yields more stable and statistically grounded system rankings. These results demonstrate that modeling disagreement is essential for robust and reproducible AI evaluation.
format Preprint
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institution arXiv
publishDate 2026
record_format arxiv
spellingShingle STABLEVAL: Disagreement-Aware and Stable Evaluation of AI Systems
Bonagiri, Akash
Anderias, Gerard Janno
Patil, Saee
Lai, Angelina
Borkar, Devang
Kang, Gezheng
Gandhi, Ishant
Rafatirad, Setareh
Homayoun, Houman
Machine Learning
Artificial Intelligence
Human evaluation remains the primary standard for assessing modern AI systems, yet annotator disagreement, bias, and variability make system rankings fragile under standard majority vote aggregation. Majority vote discards annotator reliability and item-level ambiguity, often yielding unstable comparisons across annotator subsets. We introduce STABLEVAL, a disagreement-aware evaluation framework that models latent item correctness and annotator-specific confusion patterns to produce posterior expected item credit and calibrated agent-level scores. Unlike label-denoising approaches such as Dawid-Skene, STABLEVAL is explicitly designed for stable and uncertainty-aware system evaluation rather than hard label recovery. We formalize ranking stability as a first-class evaluation objective and analyze how aggregation methods preserve or distort underlying annotator behavior. Across controlled synthetic experiments and multiple real-world human-annotated benchmarks, majority vote exhibits increasing score error and ranking instability under annotator heterogeneity and adversarial noise, while STABLEVAL yields more stable and statistically grounded system rankings. These results demonstrate that modeling disagreement is essential for robust and reproducible AI evaluation.
title STABLEVAL: Disagreement-Aware and Stable Evaluation of AI Systems
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2605.02122