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Emergent communication in multi-agent reinforcement learning for future wireless networks

M Chafii, S Naoumi, R Alami… - IEEE Internet of …, 2023 - ieeexplore.ieee.org
M Chafii, S Naoumi, R Alami, E Almazrouei, M Bennis, M Debbah
IEEE Internet of Things Magazine, 2023ieeexplore.ieee.org
322 天前 - In different wireless network scenarios, multiple network entities need to cooperate
in order to achieve a common task with minimum delay and energy consumption. Future
wireless networks mandate exchanging high dimensional data in dynamic and uncertain
environments, therefore implementing communication control tasks becomes challenging
and highly complex. Multi-agent reinforcement learning with emergent communication (EC-
MARL) is a promising solution to address high dimensional continuous control problems …
In different wireless network scenarios, multiple network entities need to cooperate in order to achieve a common task with minimum delay and energy consumption. Future wireless networks mandate exchanging high dimensional data in dynamic and uncertain environments, therefore implementing communication control tasks becomes challenging and highly complex. Multi-agent reinforcement learning with emergent communication (EC-MARL) is a promising solution to address high dimensional continuous control problems with partially observable states in a cooperative fashion where agents build an emergent communication protocol to solve complex tasks. This article articulates the importance of EC-MARL within the context of future 6G wireless networks, which imbues autonomous decision-making capabilities into network entities to solve complex tasks such as autonomous driving, robot navigation, flying base stations network planning, and smart city applications. An overview of EC-MARL algorithms and their design criteria are provided while presenting use cases and research opportuni-ties on this emerging topic.
ieeexplore.ieee.org
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