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Machine Learning for Wireless Metaverse: Fundamentals, Use Case, and Future Directions

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arxiv 2211.03703 v2 pith:BTTRHQ3P submitted 2022-11-07 cs.NI

Machine Learning for Wireless Metaverse: Fundamentals, Use Case, and Future Directions

classification cs.NI
keywords wirelesssystemsmetaverseexperiencelearningavatarscasedigital
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Today's wireless systems are posing key challenges in terms of quality of service and quality of physical experience. Metaverse has the potential to reshape, transform, and add innovations to the existing wireless systems. A metaverse is a collective virtual open space that can enable wireless systems using digital twins, digital avatars, and interactive experience technologies. Machine learning (ML) is indispensable for modeling twins, avatars, and deploying interactive experience technologies. In this paper, we present the role of ML in enabling metaverse-based wireless systems. We discuss key fundamental concepts for advancing ML in the metaverse-based wireless systems. Moreover, we present a case study of deep reinforcement learning for metaverse sensing. Finally, we discuss the future directions along with potential solutions.

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