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Optimal Performance of Second-Order Multidimensional ICA

机译:二阶多维ICA的最佳性能

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Independent component analysis (ICA) and blind source separation (BSS) deal with extracting mutually-independent elements from their observed mixtures. In "classical" ICA, each component is one-dimensional in the sense that it is proportional to a column of the mixing matrix. However, this paper considers a more general setup, of multidimensional components. In terms of the underlying sources, this means that the source covariance matrix is block-diagonal rather than diagonal, so that sources belonging to the same block are correlated whereas sources belonging to different blocks are uncorrelated. These two points of view -correlated sources vs. multidimensional components- are considered in this paper. The latter offers the benefit of providing a unique decomposition. We present a novel, closed-form expression for the optimal performance of second-order ICA in the case of multidimensional elements. Our analysis is verified through numerical experiments.
机译:独立成分分析(ICA)和盲源分离(BSS)用于从观察到的混合物中提取相互独立的元素。在“经典” ICA中,每个分量都是一维的,因为它与混合矩阵的列成比例。但是,本文考虑了多维组件的更一般的设置。就基础源而言,这意味着源协方差矩阵是块对角线而不是对角线,因此,属于同一块的源是相关的,而属于不同块的源是不相关的。本文考虑了这两种观点-相关的来源与多维组件。后者具有提供独特分解的优点。我们提出了一种新颖的,封闭形式的表达式,用于多维元素情况下二阶ICA的最佳性能。我们的分析通过数值实验得到验证。

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