Survey on Multi-Agent Q-Learning frameworks for resource management in wireless sensor network
This report aims to survey multi-agent Q-Learning algorithms, analyze different game theory frameworks used, address each framework's applications, and report challenges and future directions. The target application for this study is resource management in the wireless sensor network. In the fi...
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Zusammenfassung: | This report aims to survey multi-agent Q-Learning algorithms, analyze
different game theory frameworks used, address each framework's applications,
and report challenges and future directions. The target application for this
study is resource management in the wireless sensor network.
In the first section, the author provided an introduction regarding the
applications of wireless sensor networks. After that, the author presented a
summary of the Q-Learning algorithm, a well-known classic solution for
model-free reinforcement learning problems.
In the third section, the author extended the Q-Learning algorithm for
multi-agent scenarios and discussed its challenges.
In the fourth section, the author surveyed sets of game-theoretic frameworks
that researchers used to address this problem for resource allocation and task
scheduling in the wireless sensor networks. Lastly, the author mentioned some
interesting open challenges in this domain. |
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DOI: | 10.48550/arxiv.2105.02371 |