English

Deep Multiagent Reinforcement Learning: Challenges and Directions

Machine Learning 2022-10-14 v2 Artificial Intelligence Multiagent Systems Neural and Evolutionary Computing

Abstract

This paper surveys the field of deep multiagent reinforcement learning. The combination of deep neural networks with reinforcement learning has gained increased traction in recent years and is slowly shifting the focus from single-agent to multiagent environments. Dealing with multiple agents is inherently more complex as (a) the future rewards depend on multiple players' joint actions and (b) the computational complexity increases. We present the most common multiagent problem representations and their main challenges, and identify five research areas that address one or more of these challenges: centralised training and decentralised execution, opponent modelling, communication, efficient coordination, and reward shaping. We find that many computational studies rely on unrealistic assumptions or are not generalisable to other settings; they struggle to overcome the curse of dimensionality or nonstationarity. Approaches from psychology and sociology capture promising relevant behaviours, such as communication and coordination, to help agents achieve better performance in multiagent settings. We suggest that, for multiagent reinforcement learning to be successful, future research should address these challenges with an interdisciplinary approach to open up new possibilities in multiagent reinforcement learning.

Keywords

Cite

@article{arxiv.2106.15691,
  title  = {Deep Multiagent Reinforcement Learning: Challenges and Directions},
  author = {Annie Wong and Thomas Bäck and Anna V. Kononova and Aske Plaat},
  journal= {arXiv preprint arXiv:2106.15691},
  year   = {2022}
}

Comments

41 pages, 6 figures

R2 v1 2026-06-24T03:44:18.818Z