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Autori principali: Li, Huihan, Goel, Arnav, He, Keyu, Ren, Xiang
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2412.20760
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author Li, Huihan
Goel, Arnav
He, Keyu
Ren, Xiang
author_facet Li, Huihan
Goel, Arnav
He, Keyu
Ren, Xiang
contents In open-ended generative tasks like narrative writing or dialogue, large language models often exhibit cultural biases, showing limited knowledge and generating templated outputs for less prevalent cultures. Recent works show that these biases may stem from uneven cultural representation in pretraining corpora. This work investigates how pretraining leads to biased culture-conditioned generations by analyzing how models associate entities with cultures based on pretraining data patterns. We propose the MEMOed framework (MEMOrization from pretraining document) to determine whether a generation for a culture arises from memorization. Using MEMOed on culture-conditioned generations about food and clothing for 110 cultures, we find that high-frequency cultures in pretraining data yield more generations with memorized symbols, while some low-frequency cultures produce none. Additionally, the model favors generating entities with extraordinarily high frequency regardless of the conditioned culture, reflecting biases toward frequent pretraining terms irrespective of relevance. We hope that the MEMOed framework and our insights will inspire more works on attributing model performance on pretraining data.
format Preprint
id arxiv_https___arxiv_org_abs_2412_20760
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Attributing Culture-Conditioned Generations to Pretraining Corpora
Li, Huihan
Goel, Arnav
He, Keyu
Ren, Xiang
Computation and Language
Artificial Intelligence
In open-ended generative tasks like narrative writing or dialogue, large language models often exhibit cultural biases, showing limited knowledge and generating templated outputs for less prevalent cultures. Recent works show that these biases may stem from uneven cultural representation in pretraining corpora. This work investigates how pretraining leads to biased culture-conditioned generations by analyzing how models associate entities with cultures based on pretraining data patterns. We propose the MEMOed framework (MEMOrization from pretraining document) to determine whether a generation for a culture arises from memorization. Using MEMOed on culture-conditioned generations about food and clothing for 110 cultures, we find that high-frequency cultures in pretraining data yield more generations with memorized symbols, while some low-frequency cultures produce none. Additionally, the model favors generating entities with extraordinarily high frequency regardless of the conditioned culture, reflecting biases toward frequent pretraining terms irrespective of relevance. We hope that the MEMOed framework and our insights will inspire more works on attributing model performance on pretraining data.
title Attributing Culture-Conditioned Generations to Pretraining Corpora
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2412.20760