Curious Hierarchical Actor-Critic Reinforcement Learning
Abstract
Hierarchical abstraction and curiosity-driven exploration are two common paradigms in current reinforcement learning approaches to break down difficult problems into a sequence of simpler ones and to overcome reward sparsity. However, there is a lack of approaches that combine these paradigms, and it is currently unknown whether curiosity also helps to perform the hierarchical abstraction. As a novelty and scientific contribution, we tackle this issue and develop a method that combines hierarchical reinforcement learning with curiosity. Herein, we extend a contemporary hierarchical actor-critic approach with a forward model to develop a hierarchical notion of curiosity. We demonstrate in several continuous-space environments that curiosity can more than double the learning performance and success rates for most of the investigated benchmarking problems. We also provide our source code and a supplementary video.
Cite
@article{arxiv.2005.03420,
title = {Curious Hierarchical Actor-Critic Reinforcement Learning},
author = {Frank Röder and Manfred Eppe and Phuong D. H. Nguyen and Stefan Wermter},
journal= {arXiv preprint arXiv:2005.03420},
year = {2020}
}
Comments
12 pages, 4 figures