# Sample from an unknown probability distribution

I have a vector of ~100k length, with values between 0 and 1 representing habitat suitability at geographic locations. While some of the values are very small, many of them are 0.9 etc, so the sum is much greater than one.

I would like to generate 1000 random samples of locations, each sample having length 6 (without replacement), with the probability that a location is chosen being weighted by the value of the vector at that location.

Dummy data below. Any ideas?

``````mylocs = letters[1:10]
myprobs = c(0.1,NA,0.01,0.2,0.6,NA,0.001,0.03,0.9,NA)
mydata = data.frame(mylocs,myprobs)
``````
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I'm a bit confused with your question, so here are two possible answers.

If you want you want to sample 1000 groups of six values, where groups can share values, then:

``````locs = letters[1:15]
probs = c(0.1,NA,0.01,0.2,0.6,NA,0.001,0.03,0.9,NA, 0.1, 0.1, 0.1, 0.1, 0.1)
mydata = data.frame(locs,probs)

d = na.omit(mydata)
replicate(1000, sample(d\$locs, size=6, prob=d\$probs, replace=F))
``````

If groups shouldn't share values, then just do:

``````## Change the "2" to 1000 in the real data set
s = sample(d\$locs, size=6*2, prob=d\$probs, replace=F)
matrix(s, ncol=6)
``````
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If I understood correctly the OP meant "no repeats within each six-sample", but two different six-samples can share values. – Prasad Chalasani May 6 '11 at 21:41
That's it, I didn't know about the "prob" argument in `sample`. – J. Won. May 6 '11 at 21:42
I would fit a Bayesian hierarchical model, and then samplig from the predictive distribution . – Manoel Galdino May 6 '11 at 22:18