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Mathematical optimization / Econometrics / Numerical linear algebra / Total least squares / Low-rank approximation / Linear regression / Singular value decomposition / Matrix / Residual sum of squares / Statistics / Regression analysis / Least squares
Mathematical optimization
Econometrics
Numerical linear algebra
Total least squares
Low-rank approximation
Linear regression
Singular value decomposition
Matrix
Residual sum of squares
Statistics
Regression analysis
Least squares

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