Towards a Better Understanding of Learning
with Multiagent Teams

David Radke, Kate Larson, Tim Brecht, and Kyle Tilbury

Proceedings: International Joint Conference on Artificial Intelligence (IJCAI) 2023


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Abstract:
While it has long been recognized that a team of individual learning agents can be greater than the sum of its parts, recent work has shown that larger teams are not necessarily more effective than smaller ones. In this paper, we study why and under which conditions certain team structures promote effective learning for a population of individual learning agents. We show that, depending on the environment, some team structures help agents learn to specialize into specific roles, resulting in more favorable global results. However, large teams create credit assignment challenges that reduce coordination, leading to large teams performing poorly compared to smaller ones. We support our conclusions with both theoretical analysis and empirical results.

Keywords: Multiagent Systems, Social Dilemmas, Multiagent Learning

Previous work: Exploring the Benefits of Teams in Multiagent Learning (IJCAI 2022)

Previous work: The Importance of Credo in Multiagent Learning (AAMAS 2023)

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