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Regression analysis / Least squares / Linear regression / Ordinary least squares / Coefficient of determination / Linear least squares / Residual sum of squares / Explained sum of squares / Expected value / Polynomial regression / Regularized least squares
Date: 2016-06-24 09:25:50
Regression analysis
Least squares
Linear regression
Ordinary least squares
Coefficient of determination
Linear least squares
Residual sum of squares
Explained sum of squares
Expected value
Polynomial regression
Regularized least squares

Chapter 11 RegressionLinear Regression

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