Description Usage Arguments Value Author(s) References See Also Examples
Provides estimates for the general case of K gap times distribution function based on Kaplan-Meier Weights: Kaplan-Meier Weighted estimator, KMW.
1 | KMW3df(object, x, y, z)
|
object |
An object of class multidf. |
x |
The first time for obtaining estimates for the general case of distribution function. |
y |
The second time for obtaining estimates for the general case of distribution function. |
z |
The third time for obtaining estimates for the general case of distribution function. |
Vector with the Kaplan-Meier Weighted estimates for the general case of K gapes times distribution function.
Gustavo Soutinho and Luis Meira-Machado
de Una-Alvarez J, Meira Machado LF (2008). "A Simple Estimator of the Bivariate Distribution Function for Censored Gap Times", Statistical and Probability Letters, 78, 2440-2445. Davison, A.C. and Hinkley, D.V. (1997) "Bootstrap Methods and Their Application", Chapter 5. Cambridge University Press.
1 2 3 4 5 6 7 8 9 10 11 | b4state <- multidf(time1=bladder5state$y1, event1=bladder5state$d1,
time2= bladder5state$y1+bladder5state$y2, event2=bladder5state$d2,
time=bladder5state$y1+bladder5state$y2+bladder5state$y3, status=bladder5state$d3)
head(b4state)[[1]]
KMW3df(b4state,x=13,y=20,z=40)
b4 <- multidf(time1=bladder4$t1, event1=bladder4$d1,
time2= bladder4$t2, event2=bladder4$d2,
time=bladder4$t3, status=bladder4$d3)
KMW3df(b4,x=13,y=20,z=40)
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