Abstract:
Federated learning is a distributed machine learning technology that can protect users’ data privacy, so it has attracted more and more attention in the industry and acad...Show MoreMetadata
Abstract:
Federated learning is a distributed machine learning technology that can protect users’ data privacy, so it has attracted more and more attention in the industry and academia. Nonetheless, most of the existing works focused on the cost optimization of the entire process, while the cost of individual participants cannot be considered. In this article, we explore a min-max cost-optimal problem to guarantee the convergence rate of federated learning in terms of cost in wireless edge networks. In particular, we minimize the cost of the worst-case participant subject to the delay, local CPU-cycle frequency, power allocation, local accuracy, and subcarrier assignment constraints. Considering that the formulated problem is a mixed-integer nonlinear programming problem, we decompose it into several sub-problems to derive its solutions, in which the subcarrier assignment and power allocation are obtained by utilizing the Lagrangian dual decomposition method, the CPU-cycle frequency is obtained by a heuristic algorithm, and the local accuracy is obtained by an iteration algorithm. Simulation results show the convergence of the proposed algorithm and reveal that the proposed scheme can accomplish a tradeoff between the cost and fairness by comparing the proposed scheme with the existing schemes.
Published in: IEEE Transactions on Parallel and Distributed Systems ( Volume: 33, Issue: 11, 01 November 2022)
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- IEEE Keywords
- Index Terms
- Wireless Networks ,
- Optimal Cost ,
- Federated Learning ,
- Hierarchical Federated Learning ,
- Wireless Edge Networks ,
- Learning In Wireless Networks ,
- Min Max Cost ,
- Machine Learning ,
- Simulation Results ,
- Convergence Rate ,
- Data Privacy ,
- Localization Accuracy ,
- Nonlinear Programming ,
- Heuristic Algorithm ,
- Attention In Industry ,
- Mixed-integer Nonlinear Programming Problem ,
- Distributed Machine Learning ,
- Energy Consumption ,
- Optimization Problem ,
- Computation Time ,
- Edge Server ,
- Optimal Value Of Problem ,
- Smart Devices ,
- Optimal Power Allocation ,
- Harmony Search ,
- Transmit Power Allocation ,
- Resource Allocation Algorithm ,
- Computation Resource Allocation ,
- Updated Model ,
- Dual Variables
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Wireless Networks ,
- Optimal Cost ,
- Federated Learning ,
- Hierarchical Federated Learning ,
- Wireless Edge Networks ,
- Learning In Wireless Networks ,
- Min Max Cost ,
- Machine Learning ,
- Simulation Results ,
- Convergence Rate ,
- Data Privacy ,
- Localization Accuracy ,
- Nonlinear Programming ,
- Heuristic Algorithm ,
- Attention In Industry ,
- Mixed-integer Nonlinear Programming Problem ,
- Distributed Machine Learning ,
- Energy Consumption ,
- Optimization Problem ,
- Computation Time ,
- Edge Server ,
- Optimal Value Of Problem ,
- Smart Devices ,
- Optimal Power Allocation ,
- Harmony Search ,
- Transmit Power Allocation ,
- Resource Allocation Algorithm ,
- Computation Resource Allocation ,
- Updated Model ,
- Dual Variables
- Author Keywords