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Two novel methods for the determination of the number of components in independent components analysis models

机译:确定独立成分分析模型中成分数量的两种新颖方法

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摘要

Independent Components Analysis is a Blind Source Separation method that aims to find the pure source signals mixed together in unknown proportions in the observed signals under study. It does this by searching for factors which are mutually statistically independent. It can thus be classified among the latent-variable based methods. Like other methods based on latent variables, a careful investigation has to be carried out to find out which factors are significant and which are not. Therefore, it is important to dispose of a validation procedure to decide on the optimal number of independent components to include in the final model. This can be made complicated by the fact that two consecutive models may differ in the order and signs of similarly-indexed ICs. As well, the structure of the extracted sources can change as a function of the number of factors calculated. Two methods for determining the optimal number of ICs are proposed in this article and applied to simulated and real datasets to demonstrate their performance. (c) 2012 Elsevier B.V. All rights reserved.
机译:独立成分分析是一种盲源分离方法,旨在在研究的观察信号中找到以未知比例混合在一起的纯源信号。它通过搜索在统计上相互独立的因素来做到这一点。因此,可以将其分类为基于潜在变量的方法。像其他基于潜在变量的方法一样,必须进行仔细的调查以找出哪些因素是重要的,哪些不是。因此,重要的是要安排一个验证程序来决定要包含在最终模型中的独立组件的最佳数量。由于两个连续的模型在索引相似的IC的顺序和符号上可能会有所不同,这会使情况变得复杂。同样,提取的源的结构可以根据计算的因子数量而变化。本文提出了两种确定最佳IC数量的方法,并将其应用于模拟和真实数据集以证明其性能。 (c)2012 Elsevier B.V.保留所有权利。

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