Assessing the Reliability of LLMs Annotations in the Context of Demographic Bias and Model Explanation

Publication date

2025-08-01

Authors

Mohammadi, HadiORCID 0000-0003-0860-9200ISNI 0000000524243629
Shahedi, Tina
Mosteiro, PabloORCID 0000-0001-7231-2773ISNI 0000000493075828
Poesio, MassimoORCID 0000-0001-8469-2072ISNI 0000000124478066
Bagheri, AyoubORCID 0000-0001-6366-2173ISNI 0000000492835784
Giachanou, AnastasiaISNI 0000000506582045

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Part of book

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cc_by

Abstract

Understanding the sources of variability in annotations is crucial for developing fair NLP systems, especially for tasks like sexism detection where demographic bias is a concern. This study investigates the extent to which annotator demographic features influence labeling decisions compared to text content. Using a Generalized Linear Mixed Model, we quantify this influence, finding that while statistically present, demographic factors account for a minor fraction (~8%) of the observed variance, with tweet content being the dominant factor. We then assess the reliability of Generative AI (GenAI) models as annotators, specifically evaluating if guiding them with demographic personas improves alignment with human judgments. Our results indicate that simplistic persona prompting often fails to enhance, and sometimes degrades, performance compared to baseline models. Furthermore, explainable AI (XAI) techniques reveal that model predictions rely heavily on content-specific tokens related to sexism, rather than correlates of demographic characteristics. We argue that focusing on content-driven explanations and robust annotation protocols offers a more reliable path towards fairness than potentially persona simulation.

Keywords

SDG 5 - Gender Equality

Citation

Mohammadi, H, Shahedi, T, Mosteiro Romero, P, Poesio, M, Bagheri, A & Giachanou, A 2025, Assessing the Reliability of LLMs Annotations in the Context of Demographic Bias and Model Explanation. in Proceedings of the 6th Workshop on Gender Bias in Natural Language Processing (GeBNLP)., 9, Association for Computational Linguistics, Vienna, Austria, pp. 92-104. https://doi.org/10.18653/v1/2025.gebnlp-1.9