Weight sharing for single-channel LMS

Shamahil Ibunu, Karl Moore, C. C. Took, Danilo P. Mandic
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Abstract

Constraining a group of taps of an adaptive filter to a single value may seem like a futile task, as weight sharing reduces the degree of freedom of the algorithm, and there are no obvious advantages for implementing such an update scheme. On the other hand, weight sharing is popular in deep learning and underpins the success of convolutional neural networks (CNNs) in numerous applications. To this end, we investigate the advantages of weight sharing in single-channel least mean square (LMS), and propose weight sharing LMS (WSLMS) and partial weight sharing LMS (PWS). In particular, we illustrate how weight sharing can lead to numerous benefits such as an enhanced robustness to noise and a computational cost that is independent of the filter length. Simulations support the analysis.
单通道LMS的权重共享
将自适应过滤器的一组点击限制为单个值似乎是徒劳的任务,因为权重共享降低了算法的自由度,并且实现这种更新方案没有明显的优势。另一方面,权重共享在深度学习中很流行,并且是卷积神经网络(cnn)在众多应用中取得成功的基础。为此,我们研究了单通道最小均方(LMS)中权值共享的优势,并提出了权值共享LMS (WSLMS)和部分权值共享LMS (PWS)。特别是,我们说明了权重共享如何带来许多好处,例如增强对噪声的鲁棒性和与滤波器长度无关的计算成本。仿真结果支持了这一分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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