this is my code:

```
#define likelihood function (including an intercept/constant in the function.)
lltobit <- function(b,x,y) {
sigma <- b[3]
y <- as.matrix(y)
x <- as.matrix(x)
vecones <- rep(1,nrow(x))
x <- cbind(vecones,x)
bx <- x %*% b[1:2]
d <- y != 0
llik <- sum(d * ((-1/2)*(log(2*pi) + log(sigma^2) + ((y - bx)/sigma)^2))
+ (1-d) * (log(1 - pnorm(bx/sigma))))
return(-llik)
}
n <- nrow(censored) #define number of variables
y <- censored$y #define y and x for easier use
x1 <- as.matrix(censored$x)
x <- cbind(rep(1,n),x1) #include constant/intercept
bols <- (solve(t(x) %*% x)) %*% (t(x) %*% y) #compute ols estimator (XX) -1 XY
init <- rbind(as.matrix(bols[1:nrow(bols)]),1) #initial values
init
tobit1 <- optim(init, lltobit, x=x, y=y, hessian=TRUE, method="BFGS")
```

where censored is my data table, including 200 (censored) values of y and 200 values of x.

Everything works, but when running the optim command, i get the following error:

```
tobit1 <- optim(init, lltobit, x=x, y=y, hessian=TRUE, method="BFGS")
Error in x %*% b[1:2] : non-conformable arguments
```

I know what it means, but since x is a 200 by 2 matrix, and b[1:2] a vector of 2 by 1, what goes wrong? I tried transposing both, and also the initial values vector, but nothing works. Can anyone help me?

`x <- cbind(vecones,x)`

adds a column to`x`

. Since you are passing a two columns matrix, the new`x`

will have 3 columns and then cannot be multiplied to`b[1:2]`

. – nicola Oct 20 '15 at 13:03notto post questions, but to use a debugger or a line-by-line script execution and check what the actual dimensions (or lengths) of your variables are at the point where the error occurred. – Carl Witthoft Oct 20 '15 at 13:41`optim`

,`x`

is a`matrix`

(can you see the`x <- cbind(rep(1,n),x1)`

line?). Than, when`x`

is passed to`lltobit`

, another column is added and then the error. – nicola Oct 20 '15 at 16:17