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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >Independent component analysis based on marginal density estimation using weighted Parzen windows.
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Independent component analysis based on marginal density estimation using weighted Parzen windows.

机译:使用加权Parzen窗口基于边际密度估计进行独立成分分析。

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摘要

This work proposes a novel algorithm for independent component analysis (ICA) based on marginal density estimation. The proposed ICA algorithm aims to search for an effective demixing matrix as well as weighted Parzen window (WPW) representations for marginal densities of independent components so as to express a factorial joint density for high dimensional observations. Following the linear mixture assumption, independent component analysis is mathematically translated to minimizing the Kullback-Leibler (KL) divergence of independent components. By using Potts encoding, we express the KL divergence in an approximating form, which is shown to be tractable with respect to the WPW parameters as well as the demixing matrix and can be minimized by two interactive dynamic modules derived by the annealed expectation-maximization method and the natural gradient descent method, respectively. By numerical simulations, we test the proposed ICA algorithm with observations separately sampled from linear mixtures of independent sources and real world signals, including fetal electrocardiograms, mixed facial images and event-related potentials, extensively showing its accuracy and reliability for independent component analysis in comparison with some other popular ICA algorithms.
机译:这项工作提出了一种基于边际密度估计的独立分量分析(ICA)的新算法。所提出的ICA算法旨在搜索有效的混合矩阵以及加权Parzen窗口(WPW)表示形式的独立分量的边际密度,从而表达高维观测的阶乘联合密度。遵循线性混合假设,将数学上独立成分分析转换为最小化独立成分的Kullback-Leibler(KL)散度。通过使用Potts编码,我们以近似形式表示KL散度,这相对于WPW参数以及混合矩阵而言是易于处理的,并且可以通过退火期望最大化方法得出的两个交互式动态模块将其最小化和自然梯度下降法。通过数值模拟,我们使用独立来源和现实世界信号(包括胎儿心电图,混合人脸图像和事件相关电位)的线性混合物分别采样的观测值对提出的ICA算法进行了测试,从而广泛展示了其用于独立成分分析的准确性和可靠性以及其他一些流行的ICA算法。

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