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I need to generate a random multidimensional clustered data. For this I want to generate few uniform distributed multidimensional points (centers) and then many normal distributed points around each of them. How can I set the vector (multidimensional point) as mean for the normal distribution? I see the function rnorm can get vectors as mean and sd parameters, but I really don't understand how it works.

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Break the problem down. Do you know how to generate normally distributed points in 1D, with a given mean and sd? –  Beta Apr 3 '13 at 16:17
    
Yes, sure rnorm(n = number_of_points, mean, sd) –  Bookaa Apr 3 '13 at 16:27
    
To see the use of vectors in mean and sd parameters in rnorm you can try this: apply(matrix(rnorm(3000, mean=c(1,2,3), sd=c(1,2,3)), nr=3), 1, sd) and apply(matrix(rnorm(3000, mean=c(1,2,3), sd=c(1,2,3)), nr=3), 1, mean) –  Rcoster Apr 3 '13 at 16:45

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up vote 1 down vote accepted

Package mnormt, function rmnorm()

set.seed(2)
require(mnormt)
varcov <- matrix(rchisq(4, 2), 2)
varcov <- varcov + t(varcov)

rmnorm(1000, mean=c(0,1), varcov=varcov)
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The 'MASS' and 'mvtnorm' packages also have similar functions. –  BondedDust Apr 3 '13 at 16:38

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