State Entropy Maximization with Random Encoders for Efficient Exploration
Abstract
Recent exploration methods have proven to be a recipe for improving sample-efficiency in deep reinforcement learning (RL). However, efficient exploration in high-dimensional observation spaces still remains a challenge. This paper presents Random Encoders for Efficient Exploration (RE3), an exploration method that utilizes state entropy as an intrinsic reward. In order to estimate state entropy in environments with high-dimensional observations, we utilize a $k$-nearest neighbor entropy estimator in the low-dimensional representation space of a convolutional encoder. In particular, we find that the state entropy can be estimated in a stable and compute-efficient manner by utilizing a randomly initialized encoder, which is fixed throughout training. Our experiments show that RE3 significantly improves the sample-efficiency of both model-free and model-based RL methods on locomotion and navigation tasks from DeepMind Control Suite and MiniGrid benchmarks. We also show that RE3 allows learning diverse behaviors without extrinsic rewards, effectively improving sample-efficiency in downstream tasks.
Cite
Text
Anonymous. "State Entropy Maximization with Random Encoders for Efficient Exploration." ICLR 2021 Workshops: SSL-RL, 2021.Markdown
[Anonymous. "State Entropy Maximization with Random Encoders for Efficient Exploration." ICLR 2021 Workshops: SSL-RL, 2021.](https://mlanthology.org/iclrw/2021/anonymous2021iclrw-state/)BibTeX
@inproceedings{anonymous2021iclrw-state,
title = {{State Entropy Maximization with Random Encoders for Efficient Exploration}},
author = {Anonymous, },
booktitle = {ICLR 2021 Workshops: SSL-RL},
year = {2021},
url = {https://mlanthology.org/iclrw/2021/anonymous2021iclrw-state/}
}