Joint Resource Allocation for Efficient Federated Learning in Internet of Things Supported by Edge Computing

Jian-ji Ren, Junshuai Sun, Hui Tian, Wanli Ni, Gaofeng Nie, Yingying Wang
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引用次数: 8

Abstract

Federated learning (FL) and edge computing are both important technologies to support the future Internet of Things (IoT). Despite that the network supported by edge computing has great potential to promote FL, it is more challenging to achieve efficient FL due to more complex resource coupling in it. Focus on this problem, we formulate a problem which minimizes the weighted sum of system cost and learning cost by jointly optimizing bandwidth, computation frequency, transmission power allocation and subcarrier assignment. In order to solve this mixed-integer non-linear problem, we first decouple the bandwidth allocation subproblem from the original problem and obtain a closed-form solution. Further considering the remaining joint optimization problem of computation frequency, transmission power and subcarrier, an iterative algorithm with polynomial time complexity is designed. In an iteration, the latency and computation frequency optimization subproblem and transmission power and subcarrier optimization subproblem are solved using the proposed algorithms in turn. The iterative algorithm is repeated until convergence. Finally, to verify the performance of the algorithm, we compare the proposed algorithm with five baselines. Numerical results show the significant performance gain and the robustness of the proposed algorithm.
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基于边缘计算的物联网高效联邦学习联合资源分配
联邦学习(FL)和边缘计算都是支持未来物联网(IoT)的重要技术。尽管边缘计算支持的网络有很大的潜力来促进FL,但由于其内部资源耦合更为复杂,因此实现高效FL更具挑战性。针对这一问题,我们通过共同优化带宽、计算频率、传输功率分配和子载波分配,提出了一个最小化系统成本和学习成本加权和的问题。为了解决这一混合整数非线性问题,我们首先将带宽分配子问题与原问题解耦,得到一个封闭解。进一步考虑剩余的计算频率、传输功率和子载波联合优化问题,设计了时间复杂度为多项式的迭代算法。在迭代中依次求解时延和计算频率优化子问题以及传输功率和子载波优化子问题。重复迭代算法,直到收敛。最后,为了验证算法的性能,我们将所提出的算法与五个基线进行了比较。数值结果表明,该算法具有显著的性能增益和鲁棒性。
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