Saved in:
Bibliographic Details
Main Authors: Ivey, Jonathan, Gauch, Susan, Jurgens, David
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2507.18890
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866913959622213632
author Ivey, Jonathan
Gauch, Susan
Jurgens, David
author_facet Ivey, Jonathan
Gauch, Susan
Jurgens, David
contents NLP models often rely on human-labeled data for training and evaluation. Many approaches crowdsource this data from a large number of annotators with varying skills, backgrounds, and motivations, resulting in conflicting annotations. These conflicts have traditionally been resolved by aggregation methods that assume disagreements are errors. Recent work has argued that for many tasks annotators may have genuine disagreements and that variation should be treated as signal rather than noise. However, few models separate signal and noise in annotator disagreement. In this work, we introduce NUTMEG, a new Bayesian model that incorporates information about annotator backgrounds to remove noisy annotations from human-labeled training data while preserving systematic disagreements. Using synthetic data, we show that NUTMEG is more effective at recovering ground-truth from annotations with systematic disagreement than traditional aggregation methods. We provide further analysis characterizing how differences in subpopulation sizes, rates of disagreement, and rates of spam affect the performance of our model. Finally, we demonstrate that downstream models trained on NUTMEG-aggregated data significantly outperform models trained on data from traditionally aggregation methods. Our results highlight the importance of accounting for both annotator competence and systematic disagreements when training on human-labeled data.
format Preprint
id arxiv_https___arxiv_org_abs_2507_18890
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle NUTMEG: Separating Signal From Noise in Annotator Disagreement
Ivey, Jonathan
Gauch, Susan
Jurgens, David
Computation and Language
NLP models often rely on human-labeled data for training and evaluation. Many approaches crowdsource this data from a large number of annotators with varying skills, backgrounds, and motivations, resulting in conflicting annotations. These conflicts have traditionally been resolved by aggregation methods that assume disagreements are errors. Recent work has argued that for many tasks annotators may have genuine disagreements and that variation should be treated as signal rather than noise. However, few models separate signal and noise in annotator disagreement. In this work, we introduce NUTMEG, a new Bayesian model that incorporates information about annotator backgrounds to remove noisy annotations from human-labeled training data while preserving systematic disagreements. Using synthetic data, we show that NUTMEG is more effective at recovering ground-truth from annotations with systematic disagreement than traditional aggregation methods. We provide further analysis characterizing how differences in subpopulation sizes, rates of disagreement, and rates of spam affect the performance of our model. Finally, we demonstrate that downstream models trained on NUTMEG-aggregated data significantly outperform models trained on data from traditionally aggregation methods. Our results highlight the importance of accounting for both annotator competence and systematic disagreements when training on human-labeled data.
title NUTMEG: Separating Signal From Noise in Annotator Disagreement
topic Computation and Language
url https://arxiv.org/abs/2507.18890