Multi-Agent Synchronization Tasks
In multi-agent reinforcement learning (MARL), coordination plays a crucial role in enhancing agents' performance beyond what they could achieve through cooperation alone. The interdependence of agents' actions, coupled with the need for communication, leads to a domain where effective coor...
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Zusammenfassung: | In multi-agent reinforcement learning (MARL), coordination plays a crucial
role in enhancing agents' performance beyond what they could achieve through
cooperation alone. The interdependence of agents' actions, coupled with the
need for communication, leads to a domain where effective coordination is
crucial. In this paper, we introduce and define $\textit{Multi-Agent
Synchronization Tasks}$ (MSTs), a novel subset of multi-agent tasks. We
describe one MST, that we call $\textit{Synchronized Predator-Prey}$, offering
a detailed description that will serve as the basis for evaluating a selection
of recent state-of-the-art (SOTA) MARL algorithms explicitly designed to
address coordination challenges through the use of communication strategies.
Furthermore, we present empirical evidence that reveals the limitations of the
algorithms assessed to solve MSTs, demonstrating their inability to scale
effectively beyond 2-agent coordination tasks in scenarios where communication
is a requisite component. Finally, the results raise questions about the
applicability of recent SOTA approaches for complex coordination tasks (i.e.
MSTs) and prompt further exploration into the underlying causes of their
limitations in this context. |
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DOI: | 10.48550/arxiv.2404.18798 |