Neural network compression with feedback magnitude pruning for automatic modulation classification

Jakob Krzyston, Rajib Bhattacharjea, Andrew Stark
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引用次数: 1

Abstract

In the past few years, there have been numerous demonstrations of neural networks outperforming traditional signal processing methods in communications, notably for Automatic Modulation Classification (AMC). Despite the increase in accuracy, these algorithms are notoriously infeasible for integrating into edge computing applications. In this work, we propose an enhanced version of a simple neural network pruning technique, Iterative Magnitude Pruning (IMP), called Feedback Magnitude Pruning (FMP) and demonstrate its effectiveness for the "Lightning-Fast Modulation Classification with Hardware-Effficient Neural Network" 2021 AI for Good: Machine Learning in 5G Challenge hosted by the International Telecommunications Union (ITU) and Xilinx. IMP achieved a compression ratio of 9.313, while our proposed FMP achieved a compression ratio of 831 and normalized cost of 0.0419. Our FMP result was awarded second place, demonstrating the compression and classification accuracy benefits of pruning with feedback.
基于反馈幅度修剪的神经网络压缩自动调制分类
在过去的几年中,神经网络在通信领域的表现优于传统的信号处理方法,特别是在自动调制分类(AMC)方面。尽管准确性有所提高,但众所周知,这些算法在集成到边缘计算应用程序中是不可行的。在这项工作中,我们提出了一种简单的神经网络修剪技术的增强版本,迭代幅度修剪(IMP),称为反馈幅度修剪(FMP),并证明了其在国际电信联盟(ITU)和赛灵思主办的“硬件高效神经网络闪电般的快速调制分类”2021年AI for Good:机器学习5G挑战中的有效性。IMP实现了9.313的压缩比,而我们提出的FMP实现了831的压缩比和0.0419的归一化成本。我们的FMP结果获得了第二名,证明了带有反馈的修剪在压缩和分类精度方面的好处。
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