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Embodied, Intelligent Communication for Multi-Agent Cooperation

Esmaeil Seraj

Year
2023
Citations
5
Access
Open access

Abstract

High-performing human teams leverage intelligent and efficient communication and coordination strategies to collaboratively maximize their joint utility. Inspired by teaming behaviors among humans, I seek to develop computational methods for synthesizing intelligent communication and coordination strategies for collaborative multi-robot systems. I leverage both classical model-based control and planning approaches as well as data-driven methods such as Multi-Agent Reinforcement Learning (MARL) to provide several contributions towards enabling emergent cooperative teaming behavior across both homogeneous and heterogeneous (including agents with different capabilities) robot teams.

Keywords

Leverage (statistics)Computer scienceReinforcement learningHuman–computer interactionRobotEmbodied cognitionIntelligent agentHomogeneousDistributed computingArtificial intelligence

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