Independent Component Analysis Algorithm

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An Independent Component Analysis Algorithm is a dimensionality compression algorithm that finds the independent components by maximizing the statistical independence of the estimated components.



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  • (Fodor, 2002) ⇒ Imola K. Fodor. (2002). “A Survey of Dimension Reduction Techniques." LLNL technical report, UCRL ID-148494
    • QUOTE: This section is based on [22], a recent survey on independent component analysis (ICA). More information (and software) on this currently very popular method can be found at various websites, including [6, 24, 49]. Books summarizing the recent advances in the theory and application of ICA include [1, 48, 15, 38].

       ICA is a higher-order method that seeks linear projections, not necessarily orthogonal to each other, that are as nearly statistically independent as possible. Statistical independence is a much stronger condition than uncorrelatdness. While the latter only involves the second-order statistics, the former depends on all the higher-order statistics.

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