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Abstract algebra / Singular value decomposition / Numerical linear algebra / Matrix theory / Linear least squares / Singular value / Kernel / Euclidean vector / Orthogonal matrix / Algebra / Mathematics / Linear algebra
Date: 2011-05-05 11:37:40
Abstract algebra
Singular value decomposition
Numerical linear algebra
Matrix theory
Linear least squares
Singular value
Kernel
Euclidean vector
Orthogonal matrix
Algebra
Mathematics
Linear algebra

JOURNAL OF GEOPHYSICAL RESEARCH, VOL. 116, B02309, doi:2010JB007814, 2011 Toward understanding slip inversion uncertainty and artifacts: 2. Singular value analysis František Gallovič1 and Jiří Zahradník1 Re

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