fit_flasso {hdnom} | R Documentation |
Model selection for high-dimensional Cox models with fused lasso penalty
Description
Automatic model selection for high-dimensional Cox models with fused lasso penalty, evaluated by cross-validated likelihood.
Usage
fit_flasso(
x,
y,
nfolds = 5L,
lambda1 = c(0.001, 0.05, 0.5, 1, 5),
lambda2 = c(0.001, 0.01, 0.5),
maxiter = 25,
epsilon = 0.001,
seed = 1001,
trace = FALSE,
parallel = FALSE,
...
)
Arguments
x |
Data matrix. |
y |
Response matrix made by |
nfolds |
Fold numbers of cross-validation. |
lambda1 |
Vector of lambda1 candidates.
Default is |
lambda2 |
Vector of lambda2 candidates.
Default is |
maxiter |
The maximum number of iterations allowed.
Default is |
epsilon |
The convergence criterion.
Default is |
seed |
A random seed for cross-validation fold division. |
trace |
Output the cross-validation parameter tuning
progress or not. Default is |
parallel |
Logical. Enable parallel parameter tuning or not,
default is |
... |
Note
The cross-validation procedure used in this function is the
approximated cross-validation provided by the penalized
package. Be careful dealing with the results since they might be more
optimistic than a traditional CV procedure. This cross-validation
method is more suitable for datasets with larger number of observations,
and a higher number of cross-validation folds.
Examples
data("smart")
x <- as.matrix(smart[, -c(1, 2)])[1:120, ]
time <- smart$TEVENT[1:120]
event <- smart$EVENT[1:120]
y <- survival::Surv(time, event)
fit <- fit_flasso(
x, y,
lambda1 = c(1, 10), lambda2 = c(0.01),
nfolds = 3, seed = 11
)
nom <- as_nomogram(
fit, x, time, event,
pred.at = 365 * 2,
funlabel = "2-Year Overall Survival Probability"
)
plot(nom)