We propose a data-driven approach for power allocation in the context of federated learning (FL) over interference-limited wireless networks. The power policy is designed to maximize the transmitted information during the FL process under communication constraints, with the ultimate objective of improving the accuracy and efficiency of the global FL model being trained. The proposed power allocation policy is parameterized using a graph convolutional network and the associated constrained optimization problem is solved through a primal-dual algorithm. Numerical experiments show that the proposed method outperforms three baseline methods in both transmission success rate and FL global performance.
翻译:我们提议在联合学习(FL)对受干扰无线网络进行权力分配时采用数据驱动方法,目的是在通信受限的FL过程中最大限度地扩大传送信息,最终目标是提高所培训的全球FL模型的准确性和效率,拟议的电力分配政策采用图象革命网络参数化,相关的限制优化问题通过原始双重算法解决,数字实验显示,拟议的方法在传输成功率和FL全球性能方面均优于三种基线方法。