R Index Page
Keyword Index for the NAG Library Manual
NAG Library Manual

Keyword : Regression

F04YAF   Covariance matrix for linear least squares problems, m real equations in n unknowns
G02CAF   Simple linear regression with constant term, no missing values
G02CBF   Simple linear regression without constant term, no missing values
G02CCF   Simple linear regression with constant term, missing values
G02CDF   Simple linear regression without constant term, missing values
G02CEF   Service routine for multiple linear regression, select elements from vectors and matrices
G02CFF   Service routine for multiple linear regression, re-order elements of vectors and matrices
G02CGF   Multiple linear regression, from correlation coefficients, with constant term
G02CHF   Multiple linear regression, from correlation-like coefficients, without constant term
G02DAF   Fits a general (multiple) linear regression model
G02DCF   Add/delete an observation to/from a general linear regression model
G02DDF   Estimates of linear parameters and general linear regression model from updated model
G02DEF   Add a new independent variable to a general linear regression model
G02DFF   Delete an independent variable from a general linear regression model
G02DGF   Fits a general linear regression model to new dependent variable
G02DKF   Estimates and standard errors of parameters of a general linear regression model for given constraints
G02DNF   Computes estimable function of a general linear regression model and its standard error
G02EAF   Computes residual sums of squares for all possible linear regressions for a set of independent variables
G02EEF   Fits a linear regression model by forward selection
G02EFF   Stepwise linear regression
G02HAF   Robust regression, standard M-estimates
G02HBF   Robust regression, compute weights for use with G02HDF
G02HDF   Robust regression, compute regression with user-supplied functions and weights
G02HFF   Robust regression, variance-covariance matrix following G02HDF
G02JAF   Linear mixed effects regression using Restricted Maximum Likelihood (REML)
G02JBF   Linear mixed effects regression using Maximum Likelihood (ML)
G02JCF   Hierarchical mixed effects regression, initialization routine for G02JDF and G02JEF
G02JDF   Hierarchical mixed effects regression using Restricted Maximum Likelihood (REML)
G02JEF   Hierarchical mixed effects regression using Maximum Likelihood (ML)
G02KAF   Ridge regression, optimizing a ridge regression parameter
G02KBF   Ridge regression using a number of supplied ridge regression parameters
G02LAF   Partial least squares (PLS) regression using singular value decomposition
G02LBF   Partial least squares (PLS) regression using Wold's iterative method
G02LCF   PLS parameter estimates following partial least squares regression by G02LAF or G02LBF
G02LDF   PLS predictions based on parameter estimates from G02LCF
G02QFF   Linear quantile regression, simple interface, independent, identically distributed (IID) errors
G02QGF   Linear quantile regression, comprehensive interface
G08RAF   Regression using ranks, uncensored data
G08RBF   Regression using ranks, right-censored data

R Index Page
Keyword Index for the NAG Library Manual
NAG Library Manual

© The Numerical Algorithms Group Ltd, Oxford UK. 2013