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Matrix theory / M-estimators / Singular value decomposition / Matrix / Maximum likelihood / Idempotent matrix / Covariance / Spatial analysis / Eigenvalues and eigenvectors / Statistics / Estimation theory / Econometrics
Date: 2000-09-03 13:48:02
Matrix theory
M-estimators
Singular value decomposition
Matrix
Maximum likelihood
Idempotent matrix
Covariance
Spatial analysis
Eigenvalues and eigenvectors
Statistics
Estimation theory
Econometrics

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