I am working with data simulation techniques that generate a random data set based off of a correlation matrix entered by the user. What I noticed after a while was that some randomly generated datasets were much closer to the actually correlation matrix than others. I wanted to create a function that 1) generates data sets, 2) compares correlation matrices with the original, and 3) repeats until there is a close enough match. Unfortunately, I was trained as a social scientist not a programmer and the "if/then" computer logic is harder for me to understand. Here is as far as I have gotten based on resources I found throughout the web:

```
#Input Correlation Matrix
sigma <- matrix(c(1.00, -0.03, 0.39, -0.05, -0.08,
-0.03, 1.00, 0.07, -0.23, -0.16,
0.39, 0.07, 1.00, -0.13, -0.29,
-0.05, -0.23, -0.13, 1.00, 0.34,
-0.08, -0.16 ,-0.29, 0.34, 1.00), nr=5, byrow=TRUE)
rownames(sigma) <-c("Exercise", "Hardiness", "Fitness", "Stress", "Illness")
colnames(sigma) <-c("Exercise", "Hardiness", "Fitness", "Stress", "Illness")
#The Choleski Decomposition Random Data Generator
N <- 373
generate <-function(sigma) {
L = chol(sigma)
nvars = dim(L)[1]
r = t(L) %*% matrix(rnorm(nvars*N), nrow=nvars, ncol=N)
r = t(r)
sample <- as.data.frame(r)}
sample <- generate(sigma)
# check if the empirical correlation is close to the theoretical sigma:
correction <- function(sample) {
zigma <- cor(sample)
check <- all.equal(zigma, sigma, tolerance = .0025)
if(check != "TRUE") {
sample <- generate(sigma)
correction(sample)
}
else
return(check)
}
```

And the error message I get upon running "correction(sample)" is:

```
Error: evaluation nested too deeply: infinite recursion / options(expressions=)?
```

What do you think is wrong with the if/else loop? Should I be trying to look at this problem from another perspective than loop logic?

Thank you all for your willingness to share your knowledge and expertise!

`correction()`

inside itself when the`if()`

executes... therefore infinite recursions. I assume`sample`

is meant to change with each iteration? At present, it just gets regenerated, since`generate(sigma)`

will always return the same object – alexwhan Jun 18 '13 at 2:18