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Language-Agnostic Bias Detection in Language Models With Bias Probing

MCML Authors

Link to Profile Hinrich Schütze PI Matchmaking

Hinrich Schütze

Prof. Dr.

Principal Investigator

Abstract

Pretrained language models (PLMs) are key components in NLP, but they contain strong social biases. Quantifying these biases is challenging because current methods focusing on fill-the-mask objectives are sensitive to slight changes in input. To address this, we propose a bias probing technique called LABDet, for evaluating social bias in PLMs with a robust and language-agnostic method. For nationality as a case study, we show that LABDet “surfaces” nationality bias by training a classifier on top of a frozen PLM on non-nationality sentiment detection. We find consistent patterns of nationality bias across monolingual PLMs in six languages that align with historical and political context. We also show for English BERT that bias surfaced by LABDet correlates well with bias in the pretraining data; thus, our work is one of the few studies that directly links pretraining data to PLM behavior. Finally, we verify LABDet’s reliability and applicability to different templates and languages through an extensive set of robustness checks.

inproceedings


Findings @EMNLP 2023

Findings of the Conference on Empirical Methods in Natural Language Processing. Singapore, Dec 06-10, 2023.
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A* Conference

Authors

A. Köksal • O. Yalcin • A. Akbiyik • M. T. Kilavuz • A. Korhonen • H. Schütze

Links

DOI GitHub

Research Area

 B2 | Natural Language Processing

BibTeXKey: KYA+23

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