Generatre covariance matrix from correlation table

I have a correlation matrix:

a<-matrix(c(1,.8,.8,.8,1,.8,.8,.8,1),3)

1   2   3

1  1  .8  .8

2 .8   1  .8

3 .8  .8   1

I would now like to create a covariance matrix from the correlation matrix. How can this be done in R?

I tried:

e1.sd<-3
e2.sd<-10
e3.sd<-3

e.cov<-a*as.matrix(c,e1.sd,e2.sd,e3.sd)%*%t(as.matrix(c(e1.sd,e2.sd,e3.sd)))

But I get the error:

Error in a * as.matrix(c, e1.sd, e2.sd, e3.sd) %*% t(as.matrix(c(e1.sd,  :
non-conformable arrays

What am I doing wrong?

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The code: as.matrix(c,e1.sd,e2.sd,e3.sd) is wrong. I think what you want is: as.matrix(c(e1.sd,e2.sd,e3.sd)) – S4M Sep 11 '13 at 12:24

If you know the standard deviations of your individual variables, you can:

stdevs <- c(e1.sd, e2.sd, e3.sd)
#stdevs is the vector that contains the standard deviations of your variables
b <- stdevs %*% t(stdevs)
# b is an n*n matrix whose generic term is stdev[i]*stdev[j] (n is your number of variables)
a_covariance <- b * a  #your covariance matrix

On the other hand, if you don't know the standard deviations, it's impossible.

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let's say all variable should be with mean=0 and sd=20, then b<-c(20,20,20)%*%t(c(20,20,20), a.cov<-b*a – user1984076 Sep 11 '13 at 12:26
[,1] [,2] [,3] [1,] 400 320 320 [2,] 320 400 320 [3,] 320 320 400 IS this the correct covariance matrix? – user1984076 Sep 11 '13 at 12:26
@user1984076 yes, it looks OK since your variance is 400. I edited my post to explain how you can input the vector stdevs. – S4M Sep 11 '13 at 12:28
require(MBESS)
a <- matrix(c(1,.8,.8,.8,1,.8,.8,.8,1),3)
> cor2cov(a,c(3,10,3))
[,1] [,2] [,3]
[1,]  9.0   24  7.2
[2,] 24.0  100 24.0
[3,]  7.2   24  9.0
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