Construct conformal predictive interval based on distributional boosting
gpr_based(x, c, alpha, data_fit, data_calib, weight_calib, weight_new)
x | a vector of the covariate of the test data. |
---|---|
c | the censoring time of the test data. |
alpha | a number betweeo 0 and 1, specifying the miscaverage rate. |
data_fit | a data frame, containing the training data. |
data_calib | a data frame, containing the calibration data. |
type | either "marginal" or "local". Determines the type of confidence interval. |
dist | The distribution of T used in the cox model. |
low_ci a value of the lower bound for the survival time of the test point.
includeR 0 or 1, indicating if [r,inf) is included in the confidence interval.
Other model:
aft_based()
,
distBoost_based()
,
np_based()
,
ph_based()
,
portnoy_based()
,
pow_based()
,
quantBoost_based()
,
rf_based()