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Autori principali: Peng, Siran, Zhao, Weisong, Fu, Tianyu, Zhao, Chenxu, Zhang, Tianshuo, Zhang, Haoyuan, Zhu, Xiangyu, Wu, Minghui, Lei, Zhen
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2601.23273
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author Peng, Siran
Zhao, Weisong
Fu, Tianyu
Zhao, Chenxu
Zhang, Tianshuo
Zhang, Haoyuan
Zhu, Xiangyu
Wu, Minghui
Lei, Zhen
author_facet Peng, Siran
Zhao, Weisong
Fu, Tianyu
Zhao, Chenxu
Zhang, Tianshuo
Zhang, Haoyuan
Zhu, Xiangyu
Wu, Minghui
Lei, Zhen
contents Prompt agents have recently emerged as a promising paradigm for automated prompt optimization, framing prompt discovery as a sequential decision-making problem over a structured prompt space. While this formulation enables the use of advanced planning algorithms, these methods typically assume access to supervised reward signals, which are often unavailable in practical scenarios. In this work, we propose UPA, an Unsupervised Prompt Agent that realizes structured search and selection without relying on ground-truth (GT) rewards. Specifically, during search, UPA iteratively constructs an evolving tree structure to navigate the prompt space, guided by fine-grained and position-debiased pairwise comparisons from Large Language Models (LLMs). Crucially, as these local comparisons do not inherently yield a consistent global scale, we decouple systematic prompt exploration from final selection, introducing a two-stage framework grounded in the Bradley-Terry-Luce (BTL) model. This framework first performs path-wise Bayesian aggregation of local comparisons to filter candidates under uncertainty, followed by global tournament-style comparisons to infer latent prompt quality and identify the optimal prompt. Experiments across multiple tasks demonstrate that UPA consistently outperforms existing prompt optimization methods, showing that agent-style optimization can remain highly effective even in unsupervised settings.
format Preprint
id arxiv_https___arxiv_org_abs_2601_23273
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle UPA: Unsupervised Prompt Agent via Tree-Based Search and Selection
Peng, Siran
Zhao, Weisong
Fu, Tianyu
Zhao, Chenxu
Zhang, Tianshuo
Zhang, Haoyuan
Zhu, Xiangyu
Wu, Minghui
Lei, Zhen
Computation and Language
Prompt agents have recently emerged as a promising paradigm for automated prompt optimization, framing prompt discovery as a sequential decision-making problem over a structured prompt space. While this formulation enables the use of advanced planning algorithms, these methods typically assume access to supervised reward signals, which are often unavailable in practical scenarios. In this work, we propose UPA, an Unsupervised Prompt Agent that realizes structured search and selection without relying on ground-truth (GT) rewards. Specifically, during search, UPA iteratively constructs an evolving tree structure to navigate the prompt space, guided by fine-grained and position-debiased pairwise comparisons from Large Language Models (LLMs). Crucially, as these local comparisons do not inherently yield a consistent global scale, we decouple systematic prompt exploration from final selection, introducing a two-stage framework grounded in the Bradley-Terry-Luce (BTL) model. This framework first performs path-wise Bayesian aggregation of local comparisons to filter candidates under uncertainty, followed by global tournament-style comparisons to infer latent prompt quality and identify the optimal prompt. Experiments across multiple tasks demonstrate that UPA consistently outperforms existing prompt optimization methods, showing that agent-style optimization can remain highly effective even in unsupervised settings.
title UPA: Unsupervised Prompt Agent via Tree-Based Search and Selection
topic Computation and Language
url https://arxiv.org/abs/2601.23273