GraphWalker achieves state-of-the-art results on CWQ and WebQSP by training KGQA agents via synthetic random-walk trajectories in stage-wise SFT plus RL, with improved out-of-distribution generalization.
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GraphWalker: Agentic Knowledge Graph Question Answering via Synthetic Trajectory Curriculum
GraphWalker achieves state-of-the-art results on CWQ and WebQSP by training KGQA agents via synthetic random-walk trajectories in stage-wise SFT plus RL, with improved out-of-distribution generalization.