# correlation-covariance matrix to variance-covariance matrix

Is there an easy way to convert a correlation-covariance matrix into a variance-covariance matrix? I always use nested `for-loops` as below, but I keep thinking there is probably a built-in function in base `R`.

``````my.matrix <- matrix(c(0.64901,  0.76519, -0.63620, -0.01923,
0.02114,  0.00118, -0.43198,  0.02480,
-0.21811, -0.00630,  0.18109,  0.05964,
-0.00710,  0.00039,  0.01162,  0.20972), nrow=4, byrow=TRUE)

new.matrix <- my.matrix

for(i in 1:nrow(my.matrix)) {
for(j in 1:ncol(my.matrix)) {
new.matrix[i,j] = ifelse(i<j, my.matrix[j,i], new.matrix[i,j])
}
}

new.matrix

#          [,1]     [,2]     [,3]     [,4]
# [1,]  0.64901  0.02114 -0.21811 -0.00710
# [2,]  0.02114  0.00118 -0.00630  0.00039
# [3,] -0.21811 -0.00630  0.18109  0.01162
# [4,] -0.00710  0.00039  0.01162  0.20972
``````

I am aware of the `lower.tri` and `upper.tri` functions, but cannot seem to accomplish the task with a combination of them and `t()`.

-

I think you might need to get the indices with `which` and then swap the rows and columns. Try this.
``````k <- which(lower.tri(my.matrix), arr.ind=TRUE)