Y

Yuchen Liu

Total Citations
22
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2
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1

Publications

#1 2605.29697v1 May 28, 2026

Beyond Trajectory Rewards: Step-level Credit Assignment for Agentic Search via Graph Modeling

In Agentic Search, trajectory-level outcome rewards fail to quantify the behavioral contributions of individual steps, while existing step-level reward methods typically rely on costly tree sampling. We view world knowledge as a latent world graph and each IS task as search within a latent task graph, where effective steps should make graph progress toward the answer node. Based on this prior, we propose Graph-Distance Contribution Reward (GDCR), a step-level process reward that scores newly-retrieved and newly-cited entities by their distance to the answer node in a training-time Entity-Relation (ER) graph. We further propose Step Advantage Policy Optimization (SAPO), which converts GDCR into step-level advantages and combines them with trajectory-level outcome advantages. Experiments on four challenging benchmarks validate the effectiveness of our method.

Shengxiang Gao Jianing Yu Yuchen Liu Ying Feng Lixiong Qin +3
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