思维语言塑造大语言模型的输出多样性 / Language of Thought Shapes Output Diversity in Large Language Models
1️⃣ 一句话总结
这篇论文发现,让大语言模型用英语以外的语言进行内部思考(即使最终输出仍是英文),能显著提升其回答的多样性和创造力,且思考语言与英语差异越大,效果越明显,这有助于模型覆盖更广泛的文化知识和价值观。
Output diversity is crucial for Large Language Models as it underpins pluralism and creativity. In this work, we reveal that controlling the language used during model thinking-the language of thought-provides a novel and structural source of output diversity. Our preliminary study shows that different thinking languages occupy distinct regions in a model's thinking space. Based on this observation, we study two repeated sampling strategies under multilingual thinking-Single-Language Sampling and Mixed-Language Sampling-and conduct diversity evaluation on outputs that are controlled to be in English, regardless of the thinking language used. Across extensive experiments, we demonstrate that switching the thinking language from English to non-English languages consistently increases output diversity, with a clear and consistent positive correlation such that languages farther from English in the thinking space yield larger gains. We further show that aggregating samples across multiple thinking languages yields additional improvements through compositional effects, and that scaling sampling with linguistic heterogeneity expands the model's diversity ceiling. Finally, we show that these findings translate into practical benefits in pluralistic alignment scenarios, leading to broader coverage of cultural knowledge and value orientations in LLM outputs. Our code is publicly available at this https URL.
思维语言塑造大语言模型的输出多样性 / Language of Thought Shapes Output Diversity in Large Language Models
这篇论文发现,让大语言模型用英语以外的语言进行内部思考(即使最终输出仍是英文),能显著提升其回答的多样性和创造力,且思考语言与英语差异越大,效果越明显,这有助于模型覆盖更广泛的文化知识和价值观。
源自 arXiv: 2601.11227