Joint Age-Based Client Selection and Resource Allocation for Communication-Efficient Federated Learning Over NOMA Networks.

IEEE Trans. Commun.(2024)

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摘要
In federated learning (FL), distributed clients can collaboratively train a shared global model while retaining their own training data locally. Nevertheless, the performance of FL is often limited by the slow convergence because of poor communications links when FL is deployed over wireless networks. Due to the scarceness of radio resources, it is crucial to select appropriate clients and allocate communication resource accurately for enhancing FL performance. To address these challenges, in this paper, a joint optimization problem of client selection and resource allocation is formulated, aiming to minimize the total time consumption of each round in FL over a non-orthogonal multiple access (NOMA) enabled wireless network. Specifically, considering the staleness of local FL models, we propose an age of update (AoU) based novel client selection scheme. Subsequently, the closed-form expressions for resource allocation are derived by monotonicity analysis and dual decomposition method. In addition, a server-side artificial neural network (ANN) is proposed to predict the FL models of clients who are not selected at each round to further improve FL performance. Finally, extensive simulation results demonstrate the superior performance of the proposed schemes over FL performance, average AoU and total time consumption.
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关键词
Age of update,artificial neural network,client selection,federated learning,resource allocation
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