LGJan 20, 2021

Rank the Episodes: A Simple Approach for Exploration in Procedurally-Generated Environments

arXiv:2101.08152v249 citationsHas Code
AI Analysis

This addresses a key bottleneck in reinforcement learning for procedurally-generated environments, offering a novel approach to enhance exploration where traditional methods fail.

The paper tackles the challenge of exploration in procedurally-generated environments with sparse rewards by introducing RAPID, an episode-level exploration method that scores and imitates past good exploration behaviors, resulting in significant improvements in sample efficiency and final performance over state-of-the-art intrinsic reward strategies.

Exploration under sparse reward is a long-standing challenge of model-free reinforcement learning. The state-of-the-art methods address this challenge by introducing intrinsic rewards to encourage exploration in novel states or uncertain environment dynamics. Unfortunately, methods based on intrinsic rewards often fall short in procedurally-generated environments, where a different environment is generated in each episode so that the agent is not likely to visit the same state more than once. Motivated by how humans distinguish good exploration behaviors by looking into the entire episode, we introduce RAPID, a simple yet effective episode-level exploration method for procedurally-generated environments. RAPID regards each episode as a whole and gives an episodic exploration score from both per-episode and long-term views. Those highly scored episodes are treated as good exploration behaviors and are stored in a small ranking buffer. The agent then imitates the episodes in the buffer to reproduce the past good exploration behaviors. We demonstrate our method on several procedurally-generated MiniGrid environments, a first-person-view 3D Maze navigation task from MiniWorld, and several sparse MuJoCo tasks. The results show that RAPID significantly outperforms the state-of-the-art intrinsic reward strategies in terms of sample efficiency and final performance. The code is available at https://github.com/daochenzha/rapid

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