Graph-Assisted Stitching for Offline Hierarchical Reinforcement Learning
  • Baek, Seungho
  • Park, Taegeon
  • Park, Jongchan
  • Oh, Seungjun
  • Kim, Yusung
Citations

SCOPUS

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초록

Existing offline hierarchical reinforcement learning methods rely on high-level policy learning to generate subgoal sequences. However, their efficiency degrades as task horizons increase, and they lack effective strategies for stitching useful state transitions across different trajectories. We propose Graph-Assisted Stitching (GAS), a novel framework that formulates subgoal selection as a graph search problem rather than learning an explicit high-level policy. By embedding states into a Temporal Distance Representation (TDR) space, GAS clusters semantically similar states from different trajectories into unified graph nodes, enabling efficient transition stitching. A shortestpath algorithm is then applied to select subgoal sequences within the graph, while a low-level policy learns to reach the subgoals. To improve graph quality, we introduce the Temporal Efficiency (TE) metric, which filters out noisy or inefficient transition states, significantly enhancing task performance. GAS outperforms prior offline HRL methods across locomotion, navigation, and manipulation tasks. Notably, in the most stitchingcritical task, it achieves a score of 88.3, dramatically surpassing the previous state-of-the-art score of 1.0. Our source code is available at: https: //github.com/qortmdgh4141/GAS.

제목
Graph-Assisted Stitching for Offline Hierarchical Reinforcement Learning
저자
Baek, SeunghoPark, TaegeonPark, JongchanOh, SeungjunKim, Yusung
발행일
2025
유형
Conference Paper
저널명
Proceedings of Machine Learning Research
267
페이지
2391 ~ 2408