VOYAGER:一种利用大语言模型生成多样化数据集的无训练方法 / VOYAGER: A Training Free Approach for Generating Diverse Datasets using LLMs
1️⃣ 一句话总结
本文提出了一种名为VOYAGER的新方法,它无需额外训练,就能利用大语言模型自动生成高度多样化的合成数据集,其核心是通过一种数学优化机制来主动提升数据多样性,实验表明其效果比现有方法提升了1.5到3倍。
Large language models (LLMs) are increasingly being used to generate synthetic datasets for the evaluation and training of downstream models. However, prior work has noted that such generated data lacks diversity. In this paper, we propose Voyager, a novel principled approach to generate diverse datasets. Our approach is iterative and directly optimizes a mathematical quantity that optimizes the diversity of the dataset using the machinery of determinantal point processes. Furthermore, our approach is training-free, applicable to closed-source models, and scalable. In addition to providing theoretical justification for the working of our method, we also demonstrate through comprehensive experiments that Voyager significantly outperforms popular baseline approaches by providing a 1.5-3x improvement in diversity.
VOYAGER:一种利用大语言模型生成多样化数据集的无训练方法 / VOYAGER: A Training Free Approach for Generating Diverse Datasets using LLMs
本文提出了一种名为VOYAGER的新方法,它无需额外训练,就能利用大语言模型自动生成高度多样化的合成数据集,其核心是通过一种数学优化机制来主动提升数据多样性,实验表明其效果比现有方法提升了1.5到3倍。
源自 arXiv: 2512.12072