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Regression analysis / Estimation theory / Linear algebra / Least squares / Parametric statistics / Tikhonov regularization / Variance / Singular value decomposition / Normal distribution / Statistics / Algebra / Mathematics
Date: 2009-09-28 14:05:32
Regression analysis
Estimation theory
Linear algebra
Least squares
Parametric statistics
Tikhonov regularization
Variance
Singular value decomposition
Normal distribution
Statistics
Algebra
Mathematics

Residual periodograms for regularization

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