Authors
Annie Wong, Thomas Bäck, Anna V Kononova, Aske Plaat
Publication date
2023/6
Source
Artificial Intelligence Review
Volume
56
Issue
6
Pages
5023-5056
Publisher
Springer Netherlands
Description
This paper surveys the field of deep multiagent reinforcement learning (RL). The combination of deep neural networks with RL 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 …
Total citations
2021202220232024194649
Scholar articles
A Wong, T Bäck, AV Kononova, A Plaat - Artificial Intelligence Review, 2023