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EquiSurv (version 0.1.0)

boot_exponential: Parametric Bootstrap of time-to-event data following an exponential distribution

Description

Function generating bootstrap data according to an exponential distribution (specified by a model parameter \(\theta\)), assuming exponentially distributed right-censoring (specified by a rate C). After data generation again a model is fitted and evaluated at a pre-specified time point \(t_0\) yielding the response vector.

Usage

boot_exponential(t0, B = 1000, theta, C, N)

Arguments

t0

time point of interest

B

number of bootstrap repetitions. The default is B=1000

theta

parameter of the exponential distribution, theta=rate

C

rate of the exponential distribution specifiying the censoring

N

size of the dataset = number of observations

Value

A vector of length B containing the estimated survival at t0

Examples

Run this code
# NOT RUN {
t0<-2
N<-30
C<-1
boot_exponential(t0=t0,theta=1,C=C,N=N)
# }

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