CNL Stat : Regression
Regression
Functions
Multivariate Linear Regression—Model Fitting
Generates regressors for a general linear model, regressors_for_glm
Fits a multivariate linear regression model, regression
Multivariate Linear Regression—Statistical Inference and Diagnostics
Produces summary statistics for a regression model, regression_summary
Computes predicted values, confidence intervals, and diagnostics, regression_prediction
Construction of a completely testable hypothesis, hypothesis_partial
Sums of cross products for a multivariate hypothesis, hypothesis_scph
Tests for the multivariate linear hypothesis, hypothesis_test
Variable Selection
All best regressions, regression_selection
Stepwise regression, regression_stepwise
Polynomial and Nonlinear Regression
Fits a polynomial regression model, poly_regression
Computes predicted values, confidence intervals, and diagnostics, poly_prediction
Fits a nonlinear regression model, nonlinear_regression
Fits a nonlinear regression model using Powell's algorithm, nonlinear_optimization
Alternatives to Least Squares Regression
LAV, Lpnorm, and LMV criteria regression, Lnorm_regression
Performs partial least squares (PLS) regression, pls_regression