CLMar 16, 2024

Pre-Trained Language Models Represent Some Geographic Populations Better Than Others

arXiv:2403.11025v182 citationsh-index: 14LREC
Originality Incremental advance
AI Analysis

This highlights a bias in LLMs that challenges their universal applicability, affecting global users by showing unequal representation across populations.

The paper measured the skew in how well OPT and BLOOM pre-trained language models represent diverse geographic populations, finding that models perform much better for populations in the US and UK than in South and Southeast Asia, with this skew largely shared across model families.

This paper measures the skew in how well two families of LLMs represent diverse geographic populations. A spatial probing task is used with geo-referenced corpora to measure the degree to which pre-trained language models from the OPT and BLOOM series represent diverse populations around the world. Results show that these models perform much better for some populations than others. In particular, populations across the US and the UK are represented quite well while those in South and Southeast Asia are poorly represented. Analysis shows that both families of models largely share the same skew across populations. At the same time, this skew cannot be fully explained by sociolinguistic factors, economic factors, or geographic factors. The basic conclusion from this analysis is that pre-trained models do not equally represent the world's population: there is a strong skew towards specific geographic populations. This finding challenges the idea that a single model can be used for all populations.

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