CorReg-package |
Algorithms for regression with correlated covariates |
BicZ |
Compute the BIC of a given structure |
BicZcurve |
Curve of the BIC for each possible p2 with a fixed Z and truncature of Z |
cleancolZ |
clean Z columns (if BIC improved) |
cleanYtest |
Selection method based on p-values (coefficients) |
cleanZ |
clean Z (if BIC improved) |
cleanZR2 |
To clean Z based on R2 |
compare_beta |
compare signs of the coefficients in two vectors |
compare_sign |
compare signs of the coefficients in two vectors |
compare_struct |
To compare structures (Z) |
compare_zero |
compare 0 values in two vectors |
confint_coef |
plot and give confidence intervals on the coefficients estimated in a model or for proportions |
correg |
Estimates the response variable using a structure |
CVMSE |
Cross validation |
density_estimation |
BIC of estimated marginal gaussian mixture densities |
Estep |
Imputation of missing values knowing alpha (E step of the EM) |
fillmiss |
Fill the missing values in the dataset |
hatB |
Estimates B matrix |
matplot_zone |
draws matplot with conditionnal background for easier comparison of curves. |
mixture_generator |
Gaussiam mixture dataset generator with regression between the covariates |
MSEZ |
Computes the MSE on the joint distribution of the dataset |
MSE_loc |
simple MSE function |
OLS |
Ordinary Least Square efficiently computed with SEM for missing values |
ProbaZ |
Probability of Z without knowing the dataset. It also gives the exact number of binary nilpotent matrices of size p. |
R2Z |
Estimates R2 of each subregression |
readY |
a summary-like function |
readZ |
read the structure and explain it |
recursive_tree |
decision tree in a recursive way |
rforge |
Upgrades a package to the lastest version on R-forge |
searchZ_sparse |
Sparse structure research |
showdata |
show the missing values of a dataset |
structureFinder |
MCMC algo to find a structure between the covariates |
Terminator |
Destructing values to have missing ones |
WhoIs |
Give the partition implied by a structure |
Winitial |
initialization based on a wheight matrix (correlation or other) |
Y_generator |
Response variable generator with a linear model |