INDEPENDENT COMPONENT ANALYSIS
- ICA is about factoring probability distributions, and doing blind
source separation
- ICA is related to entropy and information maximisation, maximum
likelihood density estimation (MLE), EM (expectation maximisation,
which is MLE with hidden variables) and projection pursuit.
- ICA is a way of finding special linear (non-orthogonal)
co-ordinate systems in multivariate data, using higher-order statistics
in various ways.
- Similar to PCA, ICA determines a linear co-ordinate system
for the data, transforming it by matrix W into a new basis set.
- The transformation is free to be non-orthogonal and the axes is
sensitive to statistics of all orders as against PCA which is sensitive
to the second order statistics.