I am trying to rebuild the lm() function in R as an exercise. Here is the code I am currently using (you'll see that the only return() value in the function is b, but I will change that once I get the whole function fixed):

```
OLS <- function(y,X){
df <- nrow(X) - ncol(X);
b <- solve(t(X) %*% X) %*% (t(X) %*% y);
se_whole <- as.numeric(sqrt((t(y - X %*% b)%*%(y - X %*% b))/df));
se_beta <- se_whole * solve(t(X) %*% X);
return(b)
}
```

When I run the function, all I get for b is a column vector of NAs. Why would this be? I presume it has something to do with my definition of b within the function, but I can't seem to figure out where I'm going wrong. Perhaps someone could enlighten me!

Thanks!

`y`

and`X`

are you giving to the function? – David Robinson Mar 23 '14 at 15:08`with(mtcars, OLS(mpg, cbind(1, wt))); lm(mpg ~ wt, data = mtcars)`

– rawr Mar 23 '14 at 15:24