Kumari, Arti; Rai, Sumit; Prasad, Dilip K. (Journal article; Tidsskriftartikkel; Peer reviewed, 2022-02-25)
Federated learning promises an elegant solution for learning global models across distributed and privacy-protected datasets. However, challenges related to skewed data distribution, limited computational and communication resources, data poisoning, and free riding clients affect the performance of federated learning. Selection of the best clients for each round of learning is critical in alleviating ...