# Generate matrix with iid normal random variables using R

Is there a way to generate a data set with normally distributed random values in R without using a loop? Each entry would represent an independent random variable with a normal distribution.

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matrix(rnorm(n*p),n) for an $n \times p$ matrix with iid $\mathcal N(0,1)$ entries. –  cardinal Jul 24 '12 at 22:48

To create an N by M matrix of iid normal random variables type this:

matrix( rnorm(N*M,mean=0,sd=1), N, M)


tweak the mean and standard deviation as desired.

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As long as the questioner understands that N is the number of rows and M the number of columns, then he will be well served by this answer –  BondedDust Jul 24 '12 at 23:26
@DWin, agreed. That is the conventional notation when referring to matrices in any context though, right? –  Macro Jul 24 '12 at 23:26
I'm not really sure. I do know that people sometimes express surprise at the fact that R's matrices are filled in column-major order with calls to matrix unless byrow=TRUE. Ihat made me think that there might be variation in matrix conventions across various languages. –  BondedDust Jul 24 '12 at 23:30

let mu be a vector of means and sigma a vector of standard devs

mu<-1:10
sigma<-10:1
sample.size<-100
norm.mat<-mapply(function(x,y){rnorm(x,y,n=sample.size)},x=mu,y=sigma)


would produce a matrix with columns holding the relevant samples

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Thanks, that works. @cardinal's solution is much simpler. –  Crawling Antz Jul 24 '12 at 23:36

Notice: each entry is independent. So you cannot avoid using for loops, because you have to call rnorm once for each independent variable. If you just call rnorm(n*m) that's the n*m samples from the same random variable!

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this is wrong, and confusing ... rnorm(n*m) does generate n*m independent random samples, exactly as the OP requested. –  Ben Bolker Apr 11 '13 at 19:38