CG_smooth {mgss} | R Documentation |
High-dimensional spline smoothing using a matrix-free CG-method.
Description
Fits a smooth spline to a set of given observations using penalized splines with curvature or difference penalty and multiple covariates. The underlying linear system is solved with a matrix-free conjugated gradient (CG) method.
Usage
CG_smooth(
m,
q,
lambda,
X,
y,
pen_type = "curve",
l = NULL,
alpha_start = NULL,
K_max = NULL,
tolerance = 1e-06,
print_error = TRUE
)
Arguments
m |
Vector of non-negative integers. Each entry gives the number of inner knots for the respective covariate. |
q |
Vector of positive integers. Each entry gives the spline degree for the respective covariate. |
lambda |
Positive number as weight for the penalty term. |
X |
Matrix containing the covariates as columns and the units as rows. |
y |
Vector of length |
pen_type |
Utilized penalization method. Either |
l |
Positive integer vector of length |
alpha_start |
Vector of length |
K_max |
Positive integer as upper bound for the number of CG-iterations. Defaults to |
tolerance |
Positive number as error tolerance for the stopping criterion of the CG-method. Defaults to |
print_error |
Logical, indicating if the iteration error should be printed or not. |
Value
Returns a list containing the input m
, q
, and Omega
. Further gives the fitted spline coefficients alpha
, the fitted values fitted_values
, the residuals residuals
, the root mean squared error rmse
and the R-squared value R_squared
.
Examples
data <- generate_test_data(100, 2)
X <- data$X_train
y <- data$y_train
CG_smooth(m = c(7,7), q = c(3,3), lambda = 0.1, X = X, y = y)