English

Hierarchical Reinforcement Learning with AI Planning Models

Artificial Intelligence 2022-09-30 v2

Abstract

Two common approaches to sequential decision-making are AI planning (AIP) and reinforcement learning (RL). Each has strengths and weaknesses. AIP is interpretable, easy to integrate with symbolic knowledge, and often efficient, but requires an up-front logical domain specification and is sensitive to noise; RL only requires specification of rewards and is robust to noise but is sample inefficient and not easily supplied with external knowledge. We propose an integrative approach that combines high-level planning with RL, retaining interpretability, transfer, and efficiency, while allowing for robust learning of the lower-level plan actions. Our approach defines options in hierarchical reinforcement learning (HRL) from AIP operators by establishing a correspondence between the state transition model of AI planning problem and the abstract state transition system of a Markov Decision Process (MDP). Options are learned by adding intrinsic rewards to encourage consistency between the MDP and AIP transition models. We demonstrate the benefit of our integrated approach by comparing the performance of RL and HRL algorithms in both MiniGrid and N-rooms environments, showing the advantage of our method over the existing ones.

Keywords

Cite

@article{arxiv.2203.00669,
  title  = {Hierarchical Reinforcement Learning with AI Planning Models},
  author = {Junkyu Lee and Michael Katz and Don Joven Agravante and Miao Liu and Geraud Nangue Tasse and Tim Klinger and Shirin Sohrabi},
  journal= {arXiv preprint arXiv:2203.00669},
  year   = {2022}
}

Comments

30 pages, 15 figures

R2 v1 2026-06-24T09:58:22.947Z