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Analysis of the Kurtosis-Sum Objective Function for ICA

机译:ICA久星病程的久言病目标函数分析

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The majority of existing Independent Component Analysis (ICA) algorithms are based on maximizing or minimizing a certain objective function with the help of gradient learning methods. However, it is rather difficult to prove whether there is no spurious solution in ICA under any objective function as well as the gradient learning algorithm to optimize it. In this paper, we present an analysis on the kurtosis-sum objective function, i.e., the sum of the absolute kurtosis values of all the estimated components, with a kurtosis switching algorithm to maximize it. In two-source case, it is proved that any local maximum of this kurtosis-sum objective function corresponds to a feasible solution of the ICA problem in the asymptotic sense. The simulation results further show that the kurtosis switching algorithm always leads to a feasible solution of the ICA problem for various types of sources.
机译:大多数现有的独立分量分析(ICA)算法是基于在梯度学习方法的帮助下最大限度地或最小化某个目标函数。然而,在任何客观函数下,在任何客观函数和渐变学习算法下,它是相当困难的是否在ICA中没有虚假的解决方案,以及优化它的渐变学习算法。在本文中,我们对Kurtosis-Sum目标函数进行了分析,即所有估计成分的绝对峰值值的总和,具有刚性分泌切换算法来最大化它。在两个源案例中,证明了这种刚性病程的任何局部最大值对应于ICA问题在渐近感的可行解决方案。仿真结果进一步表明,Kurtosis开关算法总是导致各种类型的ICA问题的可行解决方案。

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