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Algebra / Linear algebra / Mathematics / Matrices / Matrix theory / Singular value decomposition / Mathematical physics / Matrix / Hermitian matrix / Eigenvalues and eigenvectors / Diagonalizable matrix / Diagonal matrix
Date: 2012-08-22 10:38:23
Algebra
Linear algebra
Mathematics
Matrices
Matrix theory
Singular value decomposition
Mathematical physics
Matrix
Hermitian matrix
Eigenvalues and eigenvectors
Diagonalizable matrix
Diagonal matrix

SPECTRAL ANALYSIS OF NON-HERMITIAN MATRICES MATHEMATICAL PHYSICS 2010 MATTHEW COUDRON, AMALIA CULIUC, PHILIP VU, STEPHEN WEBSTER

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