cs.AI updates on arXiv.org 07月22日 12:34
RAD: Retrieval High-quality Demonstrations to Enhance Decision-making
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本文提出RAD方法,结合非参数检索和扩散生成模型,解决离线强化学习中数据稀疏和轨迹重叠不足的问题,实现灵活的轨迹拼接和更好的泛化能力。

arXiv:2507.15356v1 Announce Type: new Abstract: Offline reinforcement learning (RL) enables agents to learn policies from fixed datasets, avoiding costly or unsafe environment interactions. However, its effectiveness is often limited by dataset sparsity and the lack of transition overlap between suboptimal and expert trajectories, which makes long-horizon planning particularly challenging. Prior solutions based on synthetic data augmentation or trajectory stitching often fail to generalize to novel states and rely on heuristic stitching points. To address these challenges, we propose Retrieval High-quAlity Demonstrations (RAD) for decision-making, which combines non-parametric retrieval with diffusion-based generative modeling. RAD dynamically retrieves high-return states from the offline dataset as target states based on state similarity and return estimation, and plans toward them using a condition-guided diffusion model. Such retrieval-guided generation enables flexible trajectory stitching and improves generalization when encountered with underrepresented or out-of-distribution states. Extensive experiments confirm that RAD achieves competitive or superior performance compared to baselines across diverse benchmarks, validating its effectiveness.

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离线强化学习 数据稀疏 轨迹拼接 扩散模型 泛化能力
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