Client adaptation improves federated learning with simulated non-iid clients

L Rieger, RMT Høegh, LK Hansen - arXiv preprint arXiv:2007.04806, 2020 - arxiv.org
arXiv preprint arXiv:2007.04806, 2020arxiv.org
We present a federated learning approach for learning a client adaptable, robust model
when data is non-identically and non-independently distributed (non-IID) across clients. By
simulating heterogeneous clients, we show that adding learned client-specific conditioning
improves model performance, and the approach is shown to work on balanced and
imbalanced data set from both audio and image domains. The client adaptation is
implemented by a conditional gated activation unit and is particularly beneficial when there …
We present a federated learning approach for learning a client adaptable, robust model when data is non-identically and non-independently distributed (non-IID) across clients. By simulating heterogeneous clients, we show that adding learned client-specific conditioning improves model performance, and the approach is shown to work on balanced and imbalanced data set from both audio and image domains. The client adaptation is implemented by a conditional gated activation unit and is particularly beneficial when there are large differences between the data distribution for each client, a common scenario in federated learning.
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