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Rewarding the Rare: Uniqueness-Aware RL for Creative Problem Solving in LLMs
Episode 1608

Rewarding the Rare: Uniqueness-Aware RL for Creative Problem Solving in LLMs

Daily Paper Cast

January 17, 202620m 32s

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Show Notes

🤗 Upvotes: 111 | cs.LG, cs.CL

Authors:
Zhiyuan Hu, Yucheng Wang, Yufei He, Jiaying Wu, Yilun Zhao, See-Kiong Ng, Cynthia Breazeal, Anh Tuan Luu, Hae Won Park, Bryan Hooi

Title:
Rewarding the Rare: Uniqueness-Aware RL for Creative Problem Solving in LLMs

Arxiv:
http://arxiv.org/abs/2601.08763v2

Abstract:
Reinforcement learning (RL) has become a central paradigm for post-training large language models (LLMs), particularly for complex reasoning tasks, yet it often suffers from exploration collapse: policies prematurely concentrate on a small set of dominant reasoning patterns, improving pass@1 while limiting rollout-level diversity and gains in pass@k. We argue that this failure stems from regularizing local token behavior rather than diversity over sets of solutions. To address this, we propose Uniqueness-Aware Reinforcement Learning, a rollout-level objective that explicitly rewards correct solutions that exhibit rare high-level strategies. Our method uses an LLM-based judge to cluster rollouts for the same problem according to their high-level solution strategies, ignoring superficial variations, and reweights policy advantages inversely with cluster size. As a result, correct but novel strategies receive higher rewards than redundant ones. Across mathematics, physics, and medical reasoning benchmarks, our approach consistently improves pass@$k$ across large sampling budgets and increases the area under the pass@$k$ curve (AUC@$K$) without sacrificing pass@1, while sustaining exploration and uncovering more diverse solution strategies at scale.