View source: R/bssmle_se_aipw.R
| bssmle_se_aipw | R Documentation | 
Bootstrap varince estimation for the estimated regression coefficients
bssmle_se_aipw(formula, aux, data, alpha, k, do.par, nboot, w.cores = NULL)
formula | 
 a formula object relating survival object   | 
aux | 
 auxiliary variables that may be associated with the missingness and the outcome of interest  | 
data | 
 a data frame that includes the variables named in the formula argument  | 
alpha | 
 α = (α1, α2) contains parameters that define the link functions from class of generalized odds-rate transformation models. The components α1 and α2 should both be ≥ 0. If α1 = 0, the user assumes the proportional subdistribution hazards model or the Fine-Gray model for the event type 1. If α2 = 1, the user assumes the proportional odds model for the event type 2.  | 
k | 
 a parameter that controls the number of knots in the B-spline with 0.5 ≤   | 
do.par | 
 using parallel computing for bootstrap calculation. If   | 
nboot | 
 a number of bootstrap samples for estimating variances and covariances of the estimated regression coefficients. If   | 
w.cores | 
 a number of cores that are assigned (the default is   | 
The function bssmle_aipw_se estimates bootstrap standard errors for the estimated regression coefficients from the function bssmle.
The function bssmle_aipw_se returns a list of components:
notconverged | 
 a list of number of bootstrap samples that did not converge  | 
numboot | 
 a number of bootstrap converged  | 
Sigma | 
 an estimated bootstrap variance-covariance matrix of the estimated regression coefficients  | 
Jun Park, jun.park@alumni.iu.edu
Giorgos Bakoyannis, gbakogia@iu.edu
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