Semantic Communication with Bayesian Reinforcement Learning in Edge Computing

June-Pyo Jung,Young-Bae Ko,Sung-Hwa Lim

2023 IEEE Future Networks World Forum (FNWF)(2023)

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摘要
With the advent of 6G era, technologies integrating artificial intelligence and network communication have emerged as pivotal forces in shaping the future of connectivity. Among these innovative technologies, semantic communication stands out as it focuses on transmitting semantic representations rather than raw data sequences, thereby enhancing scalability, network efficiency, and performance. In this study, we propose a novel semantic communication framework utilizing Bayesian Rein-forcement Learning. Our proposed framework takes into account the relationship between the receiver (i.e., the edge servers) with robust computing capabilities and extensive knowledge bases, and the sender (i.e., the user device) with limited computing power and knowledge repositories, offloading the computational burden to the receiver. The receiver then proceeds with learning, considering the uncertainty of the model. This proposed framework is intended for application in semantic communication, which is not yet in use in actual communication systems, and has potential applications in areas such as edge computing and IoT.
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关键词
semantic communication,bayesian reinforcement learning,bayesian adaptive markov decision process
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