Independent component analysis, a new concept?

P Comon - Signal processing, 1994 - Elsevier
Signal processing, 1994Elsevier
The independent component analysis (ICA) of a random vector consists of searching for a
linear transformation that minimizes the statistical dependence between its components. In
order to define suitable search criteria, the expansion of mutual information is utilized as a
function of cumulants of increasing orders. An efficient algorithm is proposed, which allows
the computation of the ICA of a data matrix within a polynomial time. The concept of ICA may
actually be seen as an extension of the principal component analysis (PCA), which can only …
Abstract
The independent component analysis (ICA) of a random vector consists of searching for a linear transformation that minimizes the statistical dependence between its components. In order to define suitable search criteria, the expansion of mutual information is utilized as a function of cumulants of increasing orders. An efficient algorithm is proposed, which allows the computation of the ICA of a data matrix within a polynomial time. The concept of ICA may actually be seen as an extension of the principal component analysis (PCA), which can only impose independence up to the second order and, consequently, defines directions that are orthogonal. Potential applications of ICA include data analysis and compression, Bayesian detection, localization of sources, and blind identification and deconvolution.
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