利用核希尔伯特空间提高自适应滤波的收敛速度

Eden P. da Silva, C. Estombelo-Montesco, E. Santana
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引用次数: 1

摘要

机器学习算法在许多领域都有应用,在信号处理中,自适应滤波已被应用于平滑、预测、均衡等许多工作中。最小均方(LMS)算法是这种方法的一个成功例子,该算法在学习过程中采用代价函数的瞬时梯度。然而,最近的工作提出了基于LMS的自适应滤波的改进。在此背景下,Sigmoid算法将LMS代价函数即均方误差(Mean Square Error)转换为偶误差函数,提高了学习过程的收敛速度。在更复杂的方法中,核LMS在为核函数生成的高维Hilbert空间中处理过滤问题,其中所需的滤波器输出是在该核生成空间中进行代数运算的结果,这导致与LMS相比误差减少。面对这两方面的改进,本文描述了我们提出的Sigmoid算法的内核版本,其结果表明,与内核LMS相比,学习过程的收敛速度有所下降。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
KSIG: Improving the Convergence Rate in Adaptive Filtering Using Kernel Hilbert Space
Machine learning algorithms are used in many areas, in signal processing, the adaptive filtering has been used in many jobs as smooth, prediction, equalization, etc. The Least Mean Square (LMS) algorithm is a successful example of this approach, this algorithm takes the instantaneous gradient of the cost function in his learning process. Nevertheless, recent works have proposed improvements on adaptive filtering based in LMS. On this context, Sigmoid Algorithm changes the LMS cost function, the Mean Square Error, to an even error function, which improves the convergence rate on the learning process. On a more complex approach, the kernel LMS taking the filtering problem in a high dimensional Hilbert space generated for a kernel function, where the desired filter output is the result of algebraic operations in that kernel generated space, which resulted on a decrease of the error compared to LMS. In face of this two improvements, this paper describes our work propose, the kernel version of Sigmoid Algorithm, whose results showed a decrease in the convergence rate on the learning process compared to kernel LMS.
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