The following publications are possibly variants of this publication:
- Incentive Mechanism Design for Unbiased Federated Learning with Randomized Client ParticipationBing Luo, Yutong Feng, Shiqiang Wang 0001, Jianwei Huang 0001, Leandros Tassiulas. icdcs 2023: 545-555 [doi]
- Incentive Mechanism for Federated Learning based on Random Client SamplingHongyi Wu, Xiaoying Tang 0002, Ying Jun Angela Zhang, Lin Gao. globecom 2022: 1640-1645 [doi]
- A Review of Client Selection Mechanisms in Heterogeneous Federated LearningXiao Wang, Lina Ge, Guifeng Zhang. icic 2023: 761-772 [doi]
- Incentive Design for Heterogeneous Client Selection: A Robust Federated Learning ApproachPapa Pene, Weixian Liao, Wei Yu 0002. iotj, 11(4):5939-5950, February 2024. [doi]
- Incentive and Dynamic Client Selection for Federated UnlearningYijing Lin, Zhipeng Gao, Hongyang Du, Dusit Niyato, Jiawen Kang, Xiaoyuan Liu 0002. WWW 2024: 2936-2944 [doi]
- Federated Learning Client Selection Mechanism Under System and Data HeterogeneityFan Xin, Jinghui Zhang, Junzhou Luo, Fang Dong 0001. cscwd 2022: 1239-1244 [doi]
- Incentive-Aware Autonomous Client Participation in Federated LearningMiao Hu, Di Wu 0001, Yipeng Zhou, Xu Chen 0004, Min Chen 0003. tpds, 33(10):2612-2627, 2022. [doi]
- Client Selection for Federated Bayesian LearningJiarong Yang, Yuan Liu 0001, Rahif Kassab. jsac, 41(4):915-928, April 2023. [doi]
- Stochastic Client Selection for Federated Learning With Volatile ClientsTiansheng Huang, Weiwei Lin, Li Shen 0008, Keqin Li 0001, Albert Y. Zomaya. iotj, 9(20):20055-20070, 2022. [doi]
- A Learning-Based Incentive Mechanism for Federated LearningYufeng Zhan, Peng Li 0017, Zhihao Qu, Deze Zeng, Song Guo 0001. iotj, 7(7):6360-6368, 2020. [doi]