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Main Authors: Zhao, Wanru, Chen, Yihong, Lee, Royson, Qiu, Xinchi, Gao, Yan, Fan, Hongxiang, Lane, Nicholas D.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2507.03003
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author Zhao, Wanru
Chen, Yihong
Lee, Royson
Qiu, Xinchi
Gao, Yan
Fan, Hongxiang
Lane, Nicholas D.
author_facet Zhao, Wanru
Chen, Yihong
Lee, Royson
Qiu, Xinchi
Gao, Yan
Fan, Hongxiang
Lane, Nicholas D.
contents Pre-trained large language models (LLMs) have become a cornerstone of modern natural language processing, with their capabilities extending across a wide range of applications and languages. However, the fine-tuning of multilingual LLMs, especially for low-resource languages, faces significant challenges arising from data-sharing restrictions (the physical border) and inherent linguistic differences (the linguistic border). These barriers hinder users of various languages, particularly those in low-resource regions, from fully benefiting from the advantages of LLMs. To address these challenges, we propose the Federated Prompt Tuning Paradigm for multilingual scenarios, which utilizes parameter-efficient fine-tuning while adhering to data sharing restrictions. We design a comprehensive set of experiments and analyze them using a novel notion of language distance to highlight the strengths of our paradigm: Even under computational constraints, our method not only improves data efficiency but also facilitates mutual enhancements across languages, particularly benefiting low-resource ones. Compared to traditional local cross-lingual transfer tuning methods, our approach achieves 6.9\% higher accuracy with improved data efficiency, and demonstrates greater stability and generalization. These findings underscore the potential of our approach to promote social equality and champion linguistic diversity, ensuring that no language is left behind.
format Preprint
id arxiv_https___arxiv_org_abs_2507_03003
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Breaking Physical and Linguistic Borders: Multilingual Federated Prompt Tuning for Low-Resource Languages
Zhao, Wanru
Chen, Yihong
Lee, Royson
Qiu, Xinchi
Gao, Yan
Fan, Hongxiang
Lane, Nicholas D.
Computation and Language
Pre-trained large language models (LLMs) have become a cornerstone of modern natural language processing, with their capabilities extending across a wide range of applications and languages. However, the fine-tuning of multilingual LLMs, especially for low-resource languages, faces significant challenges arising from data-sharing restrictions (the physical border) and inherent linguistic differences (the linguistic border). These barriers hinder users of various languages, particularly those in low-resource regions, from fully benefiting from the advantages of LLMs. To address these challenges, we propose the Federated Prompt Tuning Paradigm for multilingual scenarios, which utilizes parameter-efficient fine-tuning while adhering to data sharing restrictions. We design a comprehensive set of experiments and analyze them using a novel notion of language distance to highlight the strengths of our paradigm: Even under computational constraints, our method not only improves data efficiency but also facilitates mutual enhancements across languages, particularly benefiting low-resource ones. Compared to traditional local cross-lingual transfer tuning methods, our approach achieves 6.9\% higher accuracy with improved data efficiency, and demonstrates greater stability and generalization. These findings underscore the potential of our approach to promote social equality and champion linguistic diversity, ensuring that no language is left behind.
title Breaking Physical and Linguistic Borders: Multilingual Federated Prompt Tuning for Low-Resource Languages
topic Computation and Language
url https://arxiv.org/abs/2507.03003