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I am trying to generate an inverse Weibull distribution using parameters estimated from survreg in R. By this I mean I would like to, for a given probability (which will be a random number in a small simulation model implemented in MS Excel), return the expected time to failure using my parameters. I understand the general form for the inverse Weibull distribution to be:


where a and b are shape and scale parameters respectively and X is the time to failure I want. My problem is in the interpretation of the intercept and covariate parameters from survreg. I have these parameters, the unit of time is days:

             Value   Std. Error    z    p
(Intercept)     7.79    0.2288  34.051  0.000
Group 2        -0.139   0.2335  -0.596  0.551
Log(scale)     0.415    0.0279  14.88   0.000
Scale= 1.51 

Weibull distribution
Loglik(model)= -8356.7   Loglik(intercept only)= -8356.9 
Chisq = 0.37 on 1 degrees of freedom, p= 0.55 
Number of Newton-Raphson Iterations: 4 
n=1682 (3 observations deleted due to missing values)

I have read in the help files that the coefficients from R are from the "extreme value distribution" but I'm unsure what this really means and how I get 'back to' the standard scale parameter used directly in the formulae. Using b=7.79 and a=1.51 gives nonsensical answers. I really want to be able to generate a time for both the base group and 'Group 2'. I also should note that I did not perform the analysis myself and cannot interrogate the data further.

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up vote 8 down vote accepted

This is explained in the manual page, ?survreg (in the "examples" section).

y <- rweibull(1000, shape=2, scale=5)
r <- survreg(Surv(y)~1, dist="weibull")
a <- 1/r$scale      # Approximately 2
b <- exp( coef(r) ) # Approximately 5
y2 <- b * ( -ln( 1-runif(1000) ) ) ^(1/a)
y3 <- rweibull(1000, shape=a, scale=5)
# Check graphically that the distributions are the same
plot(sort(y), sort(y2))
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Excellent comment Vincent – ECII Feb 3 '12 at 8:22
Thank you, this has answered my question and my model works. If I were trying to estimate the inverse Weibull for 'Group2' rather than the base group, how would I combine the 'Group 2' coefficeint with the (Intercept) coefficient? does group2_b=base_b*(exp(-.139))? Thanks again – DavidT85 Feb 3 '12 at 19:00
@DavidT86: No. The estimated "effect" for group b on the log-scale is Intercept + beta_Grp_2, so you need to add those values: b= exp(7.79 +(-.139)) – 42- Feb 4 '12 at 14:30
Thanks for your help, I've got it working – DavidT85 Feb 6 '12 at 14:29
@BondedDust: In case I have other covariates that are not binary, i should get the scale by exp(intercept+coeff1*val_1 + coeff2*val_2...) where val_i is the value of the i-th covariate. Is that correct? – statBeginner May 26 '15 at 3:19

The key is that the shape parameter the rweibull generates is the inverse of the shape parameter the survreg inputs

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