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I want to define a distribution in my model of the form: P(x=10)=0.10, P(x=15)=0.20, P(x=20)=0.70

The WinBUGS FAQ says it is possible construct my own discrete uniform distribution as a categorical variable with a uniform prior and which can take on the necessary integer values. See the blockerht example in the first part of the manual.

I looked the example up, I think it is this one: "A hierarchical t-distribution with unknown degrees of freedom"

At the model specification they do something like:

for (n in 1:Nbins) {
   prior[n] <- 1/Nbins;   # Uniform prior on v
}
 k ~ dcat(prior[]);

Which does define a discrete uniform. But I don't know how to get to the form I need. Can anyone help me?

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you should define what you mean with "stepwise uniform distribution". Without this, it is a bad question which we cannot answer. Downvoting your question till you fix it. –  TMS Jun 9 '13 at 9:53

2 Answers 2

If I understand your question correctly, you do not need the loop...

#BUGS script to obtain distribution
m1<-"model{
  ind ~ dcat(p[])
  pmix <- x[ind]
}"
writeLines(m1,"m1.txt")

#simulate from the distribution    
library("R2OpenBUGS")
m1.bug<-bugs(data = list(x=c(10, 15, 20), p=c(0.1,0.2,0.7)),
             inits = NULL,
             param = "pmix",
             model = "m1.txt", 
             n.iter = 1100, n.burnin = 100, n.chains = 1, n.thin=1, DIC=FALSE)

hist(m1.bug$sims.list$pmix)

should work...

enter image description here

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I would inface like to sample from this custom uniform distribution. How would I come around to doing this? Is that how you built this histogram? –  JEquihua Mar 22 '13 at 17:09
    
@JEquihua, he already sampled from the distribution he shows by defining pmix <- x[ind]. pmix is the variable which histogram are you looking at. It gives you 10, 15, or 20 based on the probabilities you defined. But be careful with the terms you use; this is not uniform distribution! This one is discrete, while uniform distribution is continuous. –  TMS Jun 9 '13 at 9:51

I am learning how to do this myself. I wonder if you can do this:

prior[10] <- .1
prior[15] <- .2
prior[20] <- .7
x ~ dcat(prior[])
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