AKBE uses dual-path (with-tool and no-tool) rollouts during agentic RL training to categorize trajectories and supply targeted signals that raise average QA accuracy by 1.85 while cutting tool calls 18% and raising tool productivity 25%.
A$^2$TGPO: Agentic Turn-Group Policy Optimization with Adaptive Turn-level Clipping
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abstract
Reinforcement learning for agentic large language models (LLMs) typically relies on a sparse, trajectory-level outcome reward, making it difficult to evaluate the contribution of individual tool-calls within multi-turn interactions. Existing approaches to such process credit assignment either depend on separate external process reward models that introduce additional consumption, or tree-based structural rollout that merely redistributes the outcome signal while constraining trajectory diversity. A promising alternative leverages the per-turn change in the policy's predicted probability of the ground-truth, termed Information Gain (IG), as an intrinsic process signal without an external evaluator. However, prior work on leveraging IG signals within the RL training loop faces three systematic challenges: normalizing across turns that face heterogeneous positional contexts can distort the relative standing of individual turns, accumulating a variable number of terms causes advantage magnitudes to drift with trajectory depth, and a fixed clipping range governs policy updates identically for turns with vastly different IG signals. In this paper, we propose A$^2$TGPO (Agentic Turn-Group Policy Optimization with Adaptive Turn-level Clipping), which retains IG as the intrinsic signal but re-designs how it is normalized, accumulated, and consumed: (i) turn-group normalization: normalizes IG within each (prompt, turn-index) group so that each turn is compared only against peers at the same interaction depth; (ii) variance-rescaled discounted accumulation: divides cumulative normalized IG by square root of accumulated terms to keep advantage magnitudes comparable across turn positions; and (iii) adaptive turn-level clipping: modulates each turn's clipping range based on its normalized IG, widening the update region for informative turns and narrowing it for uninformative ones.
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cs.CL 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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Efficient Agentic Reinforcement Learning with On-Policy Intrinsic Knowledge Boundary Enhancement
AKBE uses dual-path (with-tool and no-tool) rollouts during agentic RL training to categorize trajectories and supply targeted signals that raise average QA accuracy by 1.85 while cutting tool calls 18% and raising tool productivity 25%.