cs.AI updates on arXiv.org 10月21日 12:10
MERCI:强化学习新算法提升LLM推理能力
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本文研究如何设计探索以强化LLM推理能力,提出MERCI算法,通过利用计数探索和轻量级网络来估计推理轨迹的伪计数和认知不确定性,并将其转换为内在奖励,显著提升了LLM推理表现。

arXiv:2510.16614v1 Announce Type: new Abstract: Reinforcement Learning (RL) has become a compelling way to strengthen the multi step reasoning ability of Large Language Models (LLMs). However, prevalent RL paradigms still lean on sparse outcome-based rewards and limited exploration, which often drives LLMs toward repetitive and suboptimal reasoning patterns. In this paper, we study the central question of how to design exploration for LLM reasoning and introduce MERCI (Motivating Exploration in LLM Reasoning with Count-based Intrinsic Rewards), a novel RL algorithm that augments policy optimization with a principled intrinsic reward. Building on the idea of count-based exploration, MERCI leverages a lightweight Coin Flipping Network (CFN) to estimate the pseudo count and further epistemic uncertainty over reasoning trajectories, and converts them into an intrinsic reward that values novelty while preserving the learning signal from task rewards. We integrate MERCI into some advanced RL frameworks like Group Relative Policy Optimization (GRPO). Experiments on complex reasoning benchmarks demonstrate that MERCI encourages richer and more varied chains of thought, significantly improves performance over strong baselines, and helps the policy escape local routines to discover better solutions. It indicates that our targeted intrinsic motivation can make exploration reliable for language model reasoning.

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MERCI 强化学习 LLM推理 内在奖励 认知不确定性
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