Machine-Learning-Based Cognitive Spectrum Assignment for 5G URLLC Applications
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Qian Huang | Xianzhong Xie | Mohamed Cheriet | Michel Kadoch | Kim Khoa Nguyen | Tao Hong | Hong Tang | M. Cheriet | Xianzhong Xie | Qian Huang | Hong Tang | K. Nguyen | M. Kadoch | Tao Hong
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