Joint Approximation Diagonalization of Eigen-matrices
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Joint Approximation Diagonalisation of Eigenmatrices (JADE) is an algorithm for independent component analysis that separates observed mixed signals into latent source signals by exploiting fourth order moments.[1] The fourth order moments are a proxy measure for non-Gaussianity, which is used for defining independence between the source signals.
Algorithm
Let denote an observed data matrix whose columns correspond to observations of -variate mixed vectors. It is assumed that is prewhitenend, that is, its rows have a sample mean equaling zero and a sample covariance is the dimensional identity matrix, that is,
Applying JADE to entails
- computing the fourth cumulants of and then
- optimizing an orthogonal contrast to obtain a rotation matrix
to estimate the source components given by the rows of the dimensional matrix .[2]
References
- ^ Cardoso, Jean-François; Souloumiac, Antoine (1993). "Blind beamforming for non-Gaussian signals". IEE Proceedings F (Radar and Signal Processing). 140 (6): 362–370.
- ^ Cardoso, Jean-François (Jan. 1999). "High-order contrasts for independent component analysis". Neural Computation. 11 (1): pp. 157—192. doi:10.1162/089976699300016863.
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