Compositional Reinforcement Learning from Logical Specifications
Abstract
We study the problem of learning control policies for complex tasks given by logical specifications. Recent approaches automatically generate a reward function from a given specification and use a suitable reinforcement learning algorithm to learn a policy that maximizes the expected reward. These approaches, however, scale poorly to complex tasks that require high-level planning. In this work, we develop a compositional learning approach, called DiRL, that interleaves high-level planning and reinforcement learning. First, DiRL encodes the specification as an abstract graph; intuitively, vertices and edges of the graph correspond to regions of the state space and simpler sub-tasks, respectively. Our approach then incorporates reinforcement learning to learn neural network policies for each edge (sub-task) within a Dijkstra-style planning algorithm to compute a high-level plan in the graph. An evaluation of the proposed approach on a set of challenging control benchmarks with continuous state and action spaces demonstrates that it outperforms state-of-the-art baselines.
Keywords
Cite
@article{arxiv.2106.13906,
title = {Compositional Reinforcement Learning from Logical Specifications},
author = {Kishor Jothimurugan and Suguman Bansal and Osbert Bastani and Rajeev Alur},
journal= {arXiv preprint arXiv:2106.13906},
year = {2021}
}