The following publications are possibly variants of this publication:
- FedCime: An Efficient Federated Learning Approach For Clients in Mobile Edge ComputingPaul Agbaje, Afia Anjum, Zahidur Talukder, Mohammad A. Islam 0001, Ebelechukwu Nwafor, Habeeb Olufowobi. edge 2023: 215-220 [doi]
- Distributed Task Scheduling for Wireless Powered Mobile Edge Computing: A Federated-Learning-Enabled FrameworkXiaojie Wang 0001, Shupeng Wang, Yongjian Wang, Zhaolong Ning, Lei Guo. network, 35(6):27-33, 2021. [doi]
- Aerial Access Networks for Federated Learning: Applications and ChallengesQuoc-Viet Pham, Ming Zeng 0002, Thien Huynh-The, Zhu Han 0001, Won-Joo Hwang. network, 36(3):159-166, 2022. [doi]
- FeDis: Federated Learning Framework Supported by Distributed LedgerRafael Barbarroxa, João Silva, Luis Gomes 0001, Fernando Lezama, Bruno Ribeiro 0008, Zita Vale. blockchain 2023: 32-41 [doi]