I have a data matrix `A`

(with dependencies between columns) of which I estimate the covariance matrix `S`

. I now want to use this covariance matrix to simulate a new matrix `A_sim`

. Since I assume that the underlying data generator of `A`

was gaussian, I can simply sample from a gaussian specified by `S`

. I do that in matlab as follows:

```
A_sim = randn(size(A))*chol(S);
```

However, the values in `A_sim`

are way larger than in `A`

. if I scale down `S`

by a factor of 100, `A_sim`

looks much better. I am now looking for a way to determine this scaling factor in a principled way. can anyone give advise or suggest literature that might be helpful?