AI RESEARCH

Delay-Empowered Causal Hierarchical Reinforcement Learning

arXiv CS.LG

ArXi:2605.12261v1 Announce Type: new Many real-world tasks involve delayed effects, where the outcomes of actions emerge after varying time lags. Existing delay-aware reinforcement learning methods often rely on state augmentation, prior knowledge of delay distributions, or access to non-delayed data, limiting their generalization. Hierarchical reinforcement learning, by contrast, inherently offers advantages in handling delays due to its hierarchical structure, yet existing methods are restricted to fixed delays.