Papers
arxiv:2512.12072

VOYAGER: A Training Free Approach for Generating Diverse Datasets using LLMs

Published on Dec 12
ยท Submitted by
Avinash Amballa
on Dec 18
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Abstract

Voyager is a method that uses determinantal point processes to iteratively generate diverse synthetic datasets for model evaluation and training.

AI-generated summary

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.

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Diverse data is ALL you NEED

arXiv lens breakdown of this paper ๐Ÿ‘‰ https://arxivlens.com/PaperView/Details/voyager-a-training-free-approach-for-generating-diverse-datasets-using-llms-8061-f219900c

  • Executive Summary
  • Detailed Breakdown
  • Practical Applications

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