Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

I would like to know how to implement a way to get a random sub-sample within a larger sample in R using a large collection of true random numbers (obtained using a quantum generator) those are integers which can have multiple occurrences.


Edit: Solution.

Since I needed a remise and my generated numbers in a float64 were finally unique (due to the high precision), I have used the following solution :

1) generate as many numbers as length(data)



3) split the dataset

share|improve this question
I wonder if you mean that R's internal random number generator isn't up to your standards, and so using it to 'randomly' select a subset of your fancily generated pseudo-random numbers defeats their purpose. So maybe you mean you want to use your pre-generated random #'s to generate a subset of itself? Or am I being too cute about this? ;) – joran Jul 20 '11 at 17:14
@delphine: it would be interesting to know why pseudorandom numbers aren't okay in this case. (R uses Mersenne Twister, which is good enough for most purposes; there are other bleeding edge algorithms available via the randtoolbox package.) – Richie Cotton Jul 20 '11 at 17:29
up vote 6 down vote accepted

For true random numbers, use randomNumbers from the random package.

r <- randomNumbers(number_of_samples, max = nrow(your_data), col = 1)
your_data[r, ]
share|improve this answer
Cool! So it uses the website random.org, which uses atmospheric noise to generate the numbers. Good to know! – Tommy Jul 20 '11 at 17:48
Thank you, this solution is a good one. However, I will use another solution since I have randoms numbers with much better quality (the generator obtain better results in the DieHard test) and my generated numbers were finally unique. – Delphine Jul 21 '11 at 13:26

Let's say v is your data and r are the true random numbers (scaled so that they range from 0 to 1):

> v <- runif(100)
> r <- runif(10) # using psedo-random numbers for demo purposes
> v[r * length(v) + 1]

This selects ten random elements from v (with replacement).

share|improve this answer
Since indices in R are 1-based, you need to add one: v[r * length(v) + 1] – Tommy Jul 20 '11 at 17:33
@Tommy: Good catch, thanks! Fixed. – NPE Jul 20 '11 at 19:40
Thank you. I have used another method since my random numbers were unique when generating float64 reals from [0,1]. – Delphine Jul 21 '11 at 13:23

What about sample function ?


set.seed(3) # just to get the same result
x <- 1:10
# print: 2  8  4  3  9  6  1  5 10  7
share|improve this answer
This is the best option if pseudorandom numbers are allowed. – Richie Cotton Jul 20 '11 at 17:25
@Richie: yes, but you can also use it to create a subset from another vector of numbers, or to shuffle them. It really depends on what actually the OP needs. He seems to have a vector of "truly-random" generated elements, so probably sample() is even useless, because if they're truly random... why don't take just a portion of it ? :) – digEmAll Jul 20 '11 at 17:37

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.