Independent component analysis based on genetic algorithms

Gaojin Wen, Chunxiao Zhang, Zhaorong Lin, Zhiming Shang, Hongming Wang, Qian Zhang
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引用次数: 2

Abstract

FastICA and Infomax are the most popular algorithms for calculating independent components. These two optimization process usually lead to unstable results. To overcome this drawback, a genetic algorithm for independent component analysis has been developed with enhancement of the independence of the resulting components. By modifying the FastICA to start from given initial point and adopting a new feasible fitness function, the original target of obtaining the maximum mutual independence is achieved. The proposed method is evaluated and tested on a numerical simulative data set from the measures of the normalized mutual information, negentropy and kurtosis, together with the accuracy of the estimated components and mixing vectors. Experimental results on simulated data demonstrate that compared to FastICA and Infomax, the proposed algorithm can give more accurate results together with stronger independence.
基于遗传算法的独立分量分析
FastICA和Infomax是最流行的计算独立组件的算法。这两种优化过程通常会导致不稳定的结果。为了克服这一缺点,开发了一种用于独立分量分析的遗传算法,增强了结果分量的独立性。通过对FastICA进行修改,使其从给定的初始点出发,并采用新的可行适应度函数,实现了获得最大相互独立性的原目标。从归一化互信息、负熵和峰度的度量,以及估计分量和混合向量的精度,在数值模拟数据集上对该方法进行了评估和测试。在模拟数据上的实验结果表明,与FastICA和Infomax相比,该算法可以给出更准确的结果,并且具有更强的独立性。
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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