AILGSep 30, 2021

Reinforcement Learning for Classical Planning: Viewing Heuristics as Dense Reward Generators

arXiv:2109.14830v247 citations
AI Analysis

This addresses the sample inefficiency issue for researchers applying RL to long-horizon planning domains, though it is an incremental improvement by integrating existing heuristics.

The paper tackled the sparse-reward problem in applying reinforcement learning to classical planning by using domain-independent heuristics as dense reward generators, resulting in improved sample efficiency and generalization to novel problem instances.

Recent advances in reinforcement learning (RL) have led to a growing interest in applying RL to classical planning domains or applying classical planning methods to some complex RL domains. However, the long-horizon goal-based problems found in classical planning lead to sparse rewards for RL, making direct application inefficient. In this paper, we propose to leverage domain-independent heuristic functions commonly used in the classical planning literature to improve the sample efficiency of RL. These classical heuristics act as dense reward generators to alleviate the sparse-rewards issue and enable our RL agent to learn domain-specific value functions as residuals on these heuristics, making learning easier. Correct application of this technique requires consolidating the discounted metric used in RL and the non-discounted metric used in heuristics. We implement the value functions using Neural Logic Machines, a neural network architecture designed for grounded first-order logic inputs. We demonstrate on several classical planning domains that using classical heuristics for RL allows for good sample efficiency compared to sparse-reward RL. We further show that our learned value functions generalize to novel problem instances in the same domain.

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