论文标题
多距离辅助系统中的联合学习
Federated Learning in Multi-RIS Aided Systems
论文作者
论文摘要
本文研究了由多个可重构智能表面(RISS)在联合学习系统中的模型聚合问题。计算和通信的有效整合是通过空中计算(AIRCOMP)实现的。由于所有局部参数均通过共享无线通道传输,因此不良传播误差不可避免地会恶化全局聚合的性能。这项工作的目的是1)减少AirComp的信号扭曲; 2)提高联合学习的收敛速度。因此,通过设计发射功率,控制接收标量,调整相移并在模型上传过程中选择参与者来优化均方体误差和设备集。配方的混合智能非线性问题(P0)分解为具有连续变量的非凸问题(P1),并具有整数变量的组合问题(P2)。为了解决子问题(P1),首先得出了收发器的闭合形式表达式,然后通过半限制弛豫来解决多个Antenna病例。接下来,通过调用基于惩罚的连续凸近似方法来解决相移设计的问题。在子问题(P2)方面,采用了范围编程来优化收敛加速的设备,同时满足了聚合错误需求。之后,提出了交替的优化算法来找到问题的次优溶液(P0)。最后,仿真结果表明,i)设计算法可以更快地收敛,并且与基线相比,汇总模型更准确; ii)借助多个RIS,可以显着提高联合学习的训练损失和预测准确性。
This paper investigates the problem of model aggregation in federated learning systems aided by multiple reconfigurable intelligent surfaces (RISs). The effective integration of computation and communication is achieved by over-the-air computation (AirComp). Since all local parameters are transmitted over shared wireless channels, the undesirable propagation error inevitably deteriorates the performance of global aggregation. The objective of this work is to 1) reduce the signal distortion of AirComp; 2) enhance the convergence rate of federated learning. Thus, the mean-square-error and the device set are optimized by designing the transmit power, controlling the receive scalar, tuning the phase shifts, and selecting participants in the model uploading process. The formulated mixed-integer non-linear problem (P0) is decomposed into a non-convex problem (P1) with continuous variables and a combinatorial problem (P2) with integer variables. To solve subproblem (P1), the closed-form expressions for transceivers are first derived, then the multi-antenna cases are addressed by the semidefinite relaxation. Next, the problem of phase shifts design is tackled by invoking the penalty-based successive convex approximation method. In terms of subproblem (P2), the difference-of-convex programming is adopted to optimize the device set for convergence acceleration, while satisfying the aggregation error demand. After that, an alternating optimization algorithm is proposed to find a suboptimal solution for problem (P0). Finally, simulation results demonstrate that i) the designed algorithm can converge faster and aggregate model more accurately compared to baselines; ii) the training loss and prediction accuracy of federated learning can be improved significantly with the aid of multiple RISs.