2023
DOI: 10.3390/biomimetics8040343
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Deep Learning in the Ubiquitous Human–Computer Interactive 6G Era: Applications, Principles and Prospects

Abstract: With the rapid development of enabling technologies like VR and AR, we human beings are on the threshold of the ubiquitous human-centric intelligence era. 6G is believed to be an indispensable cornerstone for efficient interaction between humans and computers in this promising vision. 6G is supposed to boost many human-centric applications due to its unprecedented performance improvements compared to 5G and before. However, challenges are still to be addressed, including but not limited to the following six as… Show more

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Cited by 4 publications
(2 citation statements)
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“…It can be employed for dynamic resource allocation, load balancing, and network optimization [ 51 ]. Deep learning models like neural networks can undergo training to forecast network performance, recognize patterns, and enhance resource allocation [ 52 ]. Deep reinforcement learning (DRL) combines deep learning with RL for complex decision making.…”
Section: Ai and ML For 6g Networkmentioning
confidence: 99%
“…It can be employed for dynamic resource allocation, load balancing, and network optimization [ 51 ]. Deep learning models like neural networks can undergo training to forecast network performance, recognize patterns, and enhance resource allocation [ 52 ]. Deep reinforcement learning (DRL) combines deep learning with RL for complex decision making.…”
Section: Ai and ML For 6g Networkmentioning
confidence: 99%
“…It can be employed for dynamic resource allocation, load balancing, and network optimization [107]. Deep learning models like neural networks can undergo training to forecast network performance, recognize patterns, and enhance resource allocation [108]. Deep reinforcement learning (DRL) combines deep learning with RL for complex decision-making.…”
Section: Artificial Intelligence and Machine Learning For 6g Networkmentioning
confidence: 99%