← all papers · overview

T\(^2\)PO: Uncertainty-guided Exploration Control For Stable Multi-turn Agentic Reinforcement Learning

·2026

Abstract

Recent progress in multi-turn reinforcement learning (RL) has significantly improved reasoning LLMs' performances on complex interactive tasks. Despite advances in stabilization techniques such as fine-grained credit assignment and trajectory filtering, instability remains pervasive and often leads to training collapse. We argue that this instability stems from inefficient exploration in multi-turn settings, where policies continue to generate low-information actions that neither reduce uncertainty nor advance task progress. To address this issue, we propose Token- and Turn-level Policy Optimization (T2^2PO), an uncertainty-aware framework that explicitly controls exploration at fine-grained levels. At the token level, T2^2PO monitors uncertainty dynamics and triggers a thinking intervention once the marginal uncertainty change falls below a threshold. At the turn level, T2^2PO identifies interactions with negligible exploration

Related papers

Ranked by semantic similarity — how closely each paper's abstract matches this one (100% = near-identical topic).