English

Poly-EPO: Training Exploratory Reasoning Models

Artificial Intelligence 2026-05-06 v3

Abstract

Exploration is a cornerstone of learning from experience: it enables agents to find solutions to complex problems, generalize to novel ones, and scale performance with test-time compute. In this paper, we present a framework for post-training language models (LMs) that explicitly encourages optimistic exploration and promotes a synergy between exploration and exploitation. The central idea is to train the LM to generate sets of responses that are collectively accurate under the reward function and exploratory in their reasoning strategies. We first develop a general recipe for optimizing LMs with set reinforcement learning (set RL) under arbitrary objective functions, showing how standard RL algorithms can be adapted to this setting through a modification to the advantage computation. We then propose Polychromic Exploratory Policy Optimization (Poly-EPO), which instantiates this framework with an objective that explicitly synergizes exploration and exploitation. Across a range of reasoning benchmarks, we show that Poly-EPO improves generalization, as evidenced by higher pass@kk coverage, preserves greater diversity in model generations, and effectively scales with test-time compute.

Keywords

Cite

@article{arxiv.2604.17654,
  title  = {Poly-EPO: Training Exploratory Reasoning Models},
  author = {Ifdita Hasan Orney and Jubayer Ibn Hamid and Shreya S Ramanujam and Shirley Wu and Hengyuan Hu and Noah Goodman and Dorsa Sadigh and Chelsea Finn},
  journal= {arXiv preprint arXiv:2604.17654},
  year   = {2026}
}
R2 v1 2026-07-01T12:17:20.443Z