论文标题
低分辨率ADC和DAC的无线边缘的盲人学习
Blind Federated Learning at the Wireless Edge with Low-Resolution ADC and DAC
论文作者
论文摘要
我们研究了协作机器学习系统,其中大规模数据集分布在独立工人之间,这些数据集根据自己的数据集计算其本地梯度估计。工人通过多路径淡出多路径,该多路径通过正交频施加多路复用,以减轻通道的频率选择性。我们假设工人没有通道状态信息(CSI),并且参数服务器(PS)采用多个天线来对齐接收的信号。为了降低功耗和硬件成本,我们在发射器和接收器侧分别采用了复杂值的低分辨率数字到Analog转换器(DACS)和模数转换器(ADC),并研究实用的低成本DAC和ADC对学习性能的实际影响。我们的理论分析表明,低分辨率DAC和ADC造成的损害,包括一位DAC和ADC的损害,并不能阻止联合学习算法的收敛性,而当PS在PS上使用了足够数量的天线时,多径通道效应消失了。我们还通过模拟验证了我们的理论结果,并证明使用低分辨率,即使是一位,DAC和ADCS也只会导致学习准确性略有下降。
We study collaborative machine learning systems where a massive dataset is distributed across independent workers which compute their local gradient estimates based on their own datasets. Workers send their estimates through a multipath fading multiple access channel with orthogonal frequency division multiplexing to mitigate the frequency selectivity of the channel. We assume that there is no channel state information (CSI) at the workers, and the parameter server (PS) employs multiple antennas to align the received signals. To reduce the power consumption and the hardware costs, we employ complex-valued low-resolution digital-to-analog converters (DACs) and analog-to-digital converters (ADCs), at the transmitter and the receiver sides, respectively, and study the effects of practical low-cost DACs and ADCs on the learning performance. Our theoretical analysis shows that the impairments caused by low-resolution DACs and ADCs, including those of one-bit DACs and ADCs, do not prevent the convergence of the federated learning algorithm, and the multipath channel effects vanish when a sufficient number of antennas are used at the PS. We also validate our theoretical results via simulations, and demonstrate that using low-resolution, even one-bit, DACs and ADCs causes only a slight decrease in the learning accuracy.