I'm trying to generate a data frame of simulated values from the student's t distribution using the standard stochastic equation. The function I use is as follows:

```
matgen<-function(means,chi,covariancematrix)
{
cols<-ncol(means);
normals<-mvrnorm(n=500,mu=means,Sigma = covariancematrix);
invgammas<-rigamma(n=500,alpha=chi/2,beta=chi/2);
gen<-as.data.frame(matrix(data=NA,ncol=cols,nrow=500));
i<-1;
while(i<=500)
{
gen[i,]<-t(means)+normals[i,]*sqrt(invgammas[i]);
i<=i+1;
}
return(gen);
}
```

If it's not clear, I'm trying to create an empty data frame, that takes in values in cols number of columns and 500 rows. The values are numeric, of course, and R tells me that in the 9th row:

```
gen<-as.data.frame(matrix(data=NA,ncol=cols,nrow=500));
```

There's an error: 'non-numeric matrix extent'.

I remember using `as.data.frame()`

to convert matrices into data frames in the past, and it worked quite smoothly. Even with numbers. I have been out of touch for a while, though, and can't seem to recollect or find online a solution to this problem. I tried `is.numeric()`

, `as.numeric()`

, 0s instead of NA there, but nothing works.

`cols`

is not numeric. However, you don't show how you call the function, in particular what you pass to`means`

. PS: Using a`while`

loop when you can use a`for`

loop is just inefficient. But I don't think you need a loop at all.`covariancematrix`

to fetch that dimension, and now it works! Just to help me learn, could you explain why you think I don't need a loop at all?