Cooperative Information Sharing to Improve Distributed Learning in Multi-Agent Systems
P. S. Dutta, N. R. Jennings, L. Moreau

TL;DR
This paper introduces a novel cooperative communication protocol for multi-agent systems that significantly improves distributed learning accuracy and efficiency in dynamic environments, outperforming existing methods in simulation tests.
Contribution
The authors propose a new post-task-completion information-sharing protocol that enhances estimate quality and system performance in multi-agent coordination tasks.
Findings
Up to 60% improvement in call connection rate.
Over 1000% increase in long-distance call connectivity.
Message overhead as low as 0.25 of benchmark strategies.
Abstract
Effective coordination of agents actions in partially-observable domains is a major challenge of multi-agent systems research. To address this, many researchers have developed techniques that allow the agents to make decisions based on estimates of the states and actions of other agents that are typically learnt using some form of machine learning algorithm. Nevertheless, many of these approaches fail to provide an actual means by which the necessary information is made available so that the estimates can be learnt. To this end, we argue that cooperative communication of state information between agents is one such mechanism. However, in a dynamically changing environment, the accuracy and timeliness of this communicated information determine the fidelity of the learned estimates and the usefulness of the actions taken based on these. Given this, we propose a novel information-sharing…
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