Revisiting Multilingual Data Mixtures in Language Model Pretraining
By: Negar Foroutan , Paul Teiletche , Ayush Kumar Tarun and more
Potential Business Impact:
Makes computers understand many languages better.
The impact of different multilingual data mixtures in pretraining large language models (LLMs) has been a topic of ongoing debate, often raising concerns about potential trade-offs between language coverage and model performance (i.e., the curse of multilinguality). In this work, we investigate these assumptions by training 1.1B and 3B parameter LLMs on diverse multilingual corpora, varying the number of languages from 25 to 400. Our study challenges common beliefs surrounding multilingual training. First, we find that combining English and multilingual data does not necessarily degrade the in-language performance of either group, provided that languages have a sufficient number of tokens included in the pretraining corpus. Second, we observe that using English as a pivot language (i.e., a high-resource language that serves as a catalyst for multilingual generalization) yields benefits across language families, and contrary to expectations, selecting a pivot language from within a specific family does not consistently improve performance for languages within that family. Lastly, we do not observe a significant "curse of multilinguality" as the number of training languages increases in models at this scale. Our findings suggest that multilingual data, when balanced appropriately, can enhance language model capabilities without compromising performance, even in low-resource settings
Similar Papers
Rethinking Multilingual Continual Pretraining: Data Mixing for Adapting LLMs Across Languages and Resources
Computation and Language
Makes AI understand many languages better.
Massively Multilingual Adaptation of Large Language Models Using Bilingual Translation Data
Computation and Language
Helps computers understand many more languages.
Multilingual Performance Biases of Large Language Models in Education
Computation and Language
Tests if computers help students learn other languages.