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Performance Analysis of Kernel Adaptive Filters Based on LMS Algorithm

机译:基于LMS算法的内核自适应滤波器性能分析

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The design of adaptive nonlinear filters has sparked a great interest in the machine learning community. The present paper aims to present some recent developments in nonlinear adaptive filtering. It provides an in-depth analysis of the performance and complexity of a class of kernel filters based on the least-mean-squares algorithm. A key feature that Underlies kernel algorithms is that they map the data in a high-dimensional feature space where linear filtering is performed The arithmetic operations are carried out in the initial space via evaluation of inner products between pairs of input patterns called kernels. The SNR improvement and the convergence speed of kernel-based least-mean-squares filters are evaluated on two types of applications: time series prediction and cardiac artifacts extraction from magneto encephalographic data.
机译:自适应非线性滤波器的设计引发了对机器学习界的极大兴趣。 本文旨在在非线性自适应过滤中展示一些最新的发展。 它提供了基于最小均方算法的一类内核滤波器性能和复杂性的深入分析。 下潜算法下潜的关键特征是它们将数据映射到执行线性滤波的高维特征空间中,通过评估称为核的输入图案对之间的内部产品在初始空间中执行算术运算。 在两种类型的应用中评估了基于核的最小平均线滤波器的SNR改进和收敛速度:时间序列预测和心脏伪像从磁脑中提取。

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