Proceedings of the 3rd Workshop on Multi-Lingual Representation Learning (MRL) 2023
DOI: 10.18653/v1/2023.mrl-1.12
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Geographic and Geopolitical Biases of Language Models

Fahim Faisal,
Antonios Anastasopoulos

Abstract: Pretrained language models (PLMs) often fail to fairly represent target users from certain world regions because of the underrepresentation of those regions in training datasets. With recent PLMs trained on enormous data sources, quantifying their potential biases is difficult, due to their black-box nature and the sheer scale of the data sources. In this work, we devise an approach to study the geographic bias (and knowledge) present in PLMs, proposing a Geographic-Representation Probing Framework adopting a … Show more

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