The Importance of Credo in Multiagent Learning

David Radke, Kate Larson, and Tim Brecht

Conference Version: Autonomous Agents and Multiagent Systems (AAMAS) 2023

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Previous Workshop Appearance: Adaptive and Learning Agents Workshop (ALA) at AAMAS 2022

Credo Image

Abstract:
We propose a model for multi-objective optimization, a credo, for agents in a system that are configured into multiple groups (i.e., teams). Our model of credo regulates how agents optimize their behavior for the component groups they belong to. We evaluate credo in the context of challenging social dilemmas with reinforcement learning agents. Our results indicate that the interests of teammates, or the entire system, are not required to be fully aligned for globally beneficial outcomes. We identify two scenarios without full common interest that achieve high equality and significantly higher mean population rewards compared to when the interests of all agents are aligned.

Keywords: Multiagent Systems, Social Dilemmas, Multiagent Learning

Preceeding Work: Exploring the Benefits of Teams in Multiagent Learning (IJCAI 2022)

Follow Up Work: Learning to Learn Group Alignment: A Self-Tuning Credo Framework with Multiagent Teams (ALA at AAMAS 2023)

Follow up work: Towards a Better Understanding of Learning with Multiagent Teams (IJCAI 2023)

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