Efficient Estimation of Unique Components in Independent Component Analysis by Matrix Representation

Yoshitatsu Matsuda, Kazunori Yamaguch
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Abstract

Independent component analysis (ICA) is a widely used method in various applications of signal processing and feature extraction. It extends principal component analysis (PCA) and can extract important and complicated components with small variances. One of the major problems of ICA is that the uniqueness of the solution is not guaranteed, unlike PCA. That is because there are many local optima in optimizing the objective function of ICA. It has been shown previously that the unique global optimum of ICA can be estimated from many random initializations by handcrafted thread computation. In this paper, the unique estimation of ICA is highly accelerated by reformulating the algorithm in matrix representation and reducing redundant calculations. Experimental results on artificial datasets and EEG data verified the efficiency of the proposed method.
用矩阵表示法高效估计独立成分分析中的独特成分
独立分量分析(ICA)是一种广泛应用于信号处理和特征提取的方法。它是主成分分析法(PCA)的延伸,可以提取方差较小的重要复杂成分。与 PCA 不同,ICA 的一个主要问题是无法保证解的唯一性。这是因为在优化 ICA 目标函数的过程中存在许多局部最优点。以前的研究表明,通过手工线程计算,可以从许多随机初始化中估计出 ICA 的唯一全局最优值。本文通过重新制定矩阵表示法和减少冗余计算,大大加快了 ICA 的唯一估计。人工数据集和脑电图数据的实验结果验证了所提方法的高效性。
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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