EMNLP 2025

November 07, 2025

Suzhou, China

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Multilingual large language models (MLLMs) are able to leverage in-context learning (ICL) to achieve high performance by leveraging cross-lingual knowledge transfer without parameter updates. However, their effectiveness is highly sensitive to example selection, particularly in multilingual settings. Based on the findings of existing work, three key factors influence multilingual ICL: (1) semantic similarity, (2) linguistic alignment, and (3) language-specific performance. However, existing approaches address these factors independently, without explicitly disentangling their combined impact, leaving optimal example selection underexplored. To address this gap, we propose balanced multi-factor ICL (BMF-ICL), a method that quantifies and optimally balances these factors for improved example selection. Experiments on mCSQA and TYDI across four MLLMs demonstrate that BMF-ICL outperforms existing methods. Further analysis highlights the importance of incorporating all three factors and the importance of selecting examples from multiple languages.

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Next from EMNLP 2025

Languages Still Left Behind: Toward a Better Multilingual Machine Translation Benchmark
poster

Languages Still Left Behind: Toward a Better Multilingual Machine Translation Benchmark

EMNLP 2025

+4David Chiang
Georgina Agyei and 6 other authors

07 November 2025

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