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Main Authors: Gruber, Cornelia, Alber, Helen, Bischl, Bernd, Kauermann, Göran, Plank, Barbara, Aßenmacher, Matthias
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.02593
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_version_ 1866909674850222080
author Gruber, Cornelia
Alber, Helen
Bischl, Bernd
Kauermann, Göran
Plank, Barbara
Aßenmacher, Matthias
author_facet Gruber, Cornelia
Alber, Helen
Bischl, Bernd
Kauermann, Göran
Plank, Barbara
Aßenmacher, Matthias
contents Access to high-quality labeled data remains a limiting factor in applied supervised learning. While label variation (LV), i.e., differing labels for the same instance, is common, especially in natural language processing, annotation frameworks often still rest on the assumption of a single ground truth. This overlooks human label variation (HLV), the occurrence of plausible differences in annotations, as an informative signal. Similarly, active learning (AL), a popular approach to optimizing the use of limited annotation budgets in training ML models, often relies on at least one of several simplifying assumptions, which rarely hold in practice when acknowledging HLV. In this paper, we examine foundational assumptions about truth and label nature, highlighting the need to decompose observed LV into signal (e.g., HLV) and noise (e.g., annotation error). We survey how the AL and (H)LV communities have addressed -- or neglected -- these distinctions and propose a conceptual framework for incorporating HLV throughout the AL loop, including instance selection, annotator choice, and label representation. We further discuss the integration of large language models (LLM) as annotators. Our work aims to lay a conceptual foundation for HLV-aware active learning, better reflecting the complexities of real-world annotation.
format Preprint
id arxiv_https___arxiv_org_abs_2507_02593
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Revisiting Active Learning under (Human) Label Variation
Gruber, Cornelia
Alber, Helen
Bischl, Bernd
Kauermann, Göran
Plank, Barbara
Aßenmacher, Matthias
Computation and Language
Human-Computer Interaction
Machine Learning
Access to high-quality labeled data remains a limiting factor in applied supervised learning. While label variation (LV), i.e., differing labels for the same instance, is common, especially in natural language processing, annotation frameworks often still rest on the assumption of a single ground truth. This overlooks human label variation (HLV), the occurrence of plausible differences in annotations, as an informative signal. Similarly, active learning (AL), a popular approach to optimizing the use of limited annotation budgets in training ML models, often relies on at least one of several simplifying assumptions, which rarely hold in practice when acknowledging HLV. In this paper, we examine foundational assumptions about truth and label nature, highlighting the need to decompose observed LV into signal (e.g., HLV) and noise (e.g., annotation error). We survey how the AL and (H)LV communities have addressed -- or neglected -- these distinctions and propose a conceptual framework for incorporating HLV throughout the AL loop, including instance selection, annotator choice, and label representation. We further discuss the integration of large language models (LLM) as annotators. Our work aims to lay a conceptual foundation for HLV-aware active learning, better reflecting the complexities of real-world annotation.
title Revisiting Active Learning under (Human) Label Variation
topic Computation and Language
Human-Computer Interaction
Machine Learning
url https://arxiv.org/abs/2507.02593