The following publications are possibly variants of this publication:
- Rate-Splitting Multiple Access Aided Mobile Edge Computing With Randomly Deployed UsersPengxu Chen, Hongwu Liu, Yinghui Ye, Liang Yang 0001, Kyeong Jin Kim, Theodoros A. Tsiftsis. jsac, 41(5):1549-1565, May 2023. [doi]
- Energy-Efficient Cooperation in Mobile Edge Computing-Enabled Cognitive Radio NetworksBoyang Liu, Jin Wang, Shuai Ma, Fuhui Zhou, Yujiao Ma, Guangyue Lu. access, 7:45382-45394, 2019. [doi]
- Machine learning enabled distributed mobile edge computing networkJunchao Ma, Hao-Hsuan Chang, Pingzhi Fan, Lingjia Liu. edge 2019: 350-351 [doi]
- Rate-Splitting Multiple Access-Based Cognitive Radio Network With ipSIC and CEEsXuesong Gao, Xingwang Li 0001, Congzheng Han, Ming Zeng 0002, Hongwu Liu, Shahid Mumtaz, Arumugam Nallanathan. tvt, 73(1):1430-1434, January 2024. [doi]
- EdgeFaaSBench: Benchmarking Edge Devices Using Serverless ComputingKaustubh Rajendra Rajput, Chinmay Dilip Kulkarni, Byungjin Cho, Wei Wang 0054, In Kee Kim. edge 2022: 93-103 [doi]
- Full-Duplex Aided User Virtualization for Mobile Edge Computing in 5G NetworksMing Liu, Yuming Mao, Supeng Leng, Sun Mao. access, 6:2996-3007, 2018. [doi]