Boosting Studies of Multi-Agent Reinforcement Learning on Google Research Football Environment: the Past, Present, and Future
Yan Song, He Jiang, Haifeng Zhang, Zheng Tian, Weinan Zhang, Jun, Wang

TL;DR
This paper advances multi-agent reinforcement learning research in Google Research Football by standardizing environments, benchmarking algorithms, and introducing tools and frameworks for more effective training and evaluation.
Contribution
It introduces standardized settings, benchmarking across scenarios, and new analytical tools, along with a distributed self-play framework to accelerate training in complex football scenarios.
Findings
Standardized environment settings for multi-agent scenarios.
Benchmarking of cooperative algorithms across various game complexities.
Introduction of tools and frameworks for improved training and evaluation.
Abstract
Even though Google Research Football (GRF) was initially benchmarked and studied as a single-agent environment in its original paper, recent years have witnessed an increasing focus on its multi-agent nature by researchers utilizing it as a testbed for Multi-Agent Reinforcement Learning (MARL). However, the absence of standardized environment settings and unified evaluation metrics for multi-agent scenarios hampers the consistent understanding of various studies. Furthermore, the challenging 5-vs-5 and 11-vs-11 full-game scenarios have received limited thorough examination due to their substantial training complexities. To address these gaps, this paper extends the original environment by not only standardizing the environment settings and benchmarking cooperative learning algorithms across different scenarios, including the most challenging full-game scenarios, but also by discussing…
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Taxonomy
TopicsSports Analytics and Performance · Educational Games and Gamification
