Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Hybrid Actor-Critic Reinforcement Learning in Parameterized Action Space

About

In this paper we propose a hybrid architecture of actor-critic algorithms for reinforcement learning in parameterized action space, which consists of multiple parallel sub-actor networks to decompose the structured action space into simpler action spaces along with a critic network to guide the training of all sub-actor networks. While this paper is mainly focused on parameterized action space, the proposed architecture, which we call hybrid actor-critic, can be extended for more general action spaces which has a hierarchical structure. We present an instance of the hybrid actor-critic architecture based on proximal policy optimization (PPO), which we refer to as hybrid proximal policy optimization (H-PPO). Our experiments test H-PPO on a collection of tasks with parameterized action space, where H-PPO demonstrates superior performance over previous methods of parameterized action reinforcement learning.

Zhou Fan, Rui Su, Weinan Zhang, Yong Yu• 2019

Related benchmarks

TaskDatasetResultRank
Air-to-Air CombatAir-to-Air Combat Easy
Success Rate87.8
7
Air-to-Air CombatAir-to-Air Combat Hard
Success Rate65.4
7
Air-to-Air CombatAir-to-Air Combat Medium
Success Rate76.2
7
Maze NavigationMaze Navigation Medium
Success Rate74.6
7
Maze NavigationMaze Navigation Hard
Success Rate46.2
7
Maze NavigationMaze Navigation Easy
Success Rate87.2
7
Showing 6 of 6 rows

Other info

Follow for update