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X-Instruction: Aligning Language Model in Low-resource Languages with Self-curated Cross-lingual Instructions (2405.19744v1)

Published 30 May 2024 in cs.CL and cs.AI

Abstract: LLMs respond well in high-resource languages like English but struggle in low-resource languages. It may arise from the lack of high-quality instruction following data in these languages. Directly translating English samples into these languages can be a solution but unreliable, leading to responses with translation errors and lacking language-specific or cultural knowledge. To address this issue, we propose a novel method to construct cross-lingual instruction following samples with instruction in English and response in low-resource languages. Specifically, the LLM first learns to generate appropriate English instructions according to the natural web texts in other languages as responses. The candidate cross-lingual instruction tuning samples are further refined and diversified. We have employed this method to build a large-scale cross-lingual instruction tuning dataset on 10 languages, namely X-Instruction. The instruction data built using our method incorporate more language-specific knowledge compared with the naive translation method. Experimental results have shown that the response quality of the model tuned on X-Instruction greatly exceeds the model distilled from a powerful teacher model, reaching or even surpassing the ones of ChatGPT. In addition, we find that models tuned on cross-lingual instruction following samples can follow the instruction in the output language without further tuning.

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Authors (6)
  1. Chong Li (112 papers)
  2. Wen Yang (185 papers)
  3. Jiajun Zhang (176 papers)
  4. Jinliang Lu (8 papers)
  5. Shaonan Wang (19 papers)
  6. Chengqing Zong (65 papers)
Citations (2)