I should start by saying what I'm trying to do: I want to use the mle function without having to re-write my log likelihood function each time I want to try a different model specification. Because mle is expecting a named list of starting values, you apparently cannot just write the log-likelihood function as taking a vector of parameters. A simple example:

Suppose I want to fit a linear regression model via maximum likelihood and at first, I'm ignoring one of my predictors:

```
n <- 100
df <- data.frame(x1 = runif(n), x2 = runif(n), y = runif(n))
Y <- df$y
X <- model.matrix(lm(y ~ x1, data = df))
# define log-likelihood function
ll <- function(beta0, beta1, sigma){
beta = matrix(NA, nrow=2, ncol=1)
beta[,1] = c(beta0, beta1)
-sum(log(dnorm(Y - X %*% beta, 0, sigma)))
}
library(stats4)
mle(ll, start = list(beta0=.1, beta1=.2, sigma=1)
```

Now, if I want to fit a different model, say:

```
m <- lm(y ~ x1 + x2, data = df)
```

I cannot re-use my log-likelihood function--I'd have to re-write it to have the beta3 parameter. What I'd like to do is something like:

```
ll.flex <- function(theta){
# theta is a vector that I can use directly
...
}
```

*if* I could then somehow adjust the start argument in mle to account for my now vector-input log-likelihood function, or barring that, have a function that constructs the log-likelihood function at run-time, say by constructing the named list of arguments and then using it to define the function e.g., something like this:

```
X <- model.matrix(lm(y ~ x1 + x2, data = df))
arguments <- rep(NA, dim(X)[2])
names(arguments) <- colnames(X)
ll.magic <- function(bring.this.to.life.as.function.arguments(arguments)){...}
```

**Update:**

I ended up writing a helper function that can add an arbitrary number of named arguments x1, x2, x3... to a passed function f.

```
add.arguments <- function(f,n){
# adds n arguments to a function f; returns that new function
t = paste("arg <- alist(",
paste(sapply(1:n, function(i) paste("x",i, "=",sep="")), collapse=","),
")", sep="")
formals(f) <- eval(parse(text=t))
f
}
```

It's ugly, but it got the job done, letting me re-factor my log-likelihood function on the fly.

`fixed(x2=0)`

? – Ben Bolker Sep 27 '11 at 16:12`mle`

to fit parameters, when`lm`

already does that for you?? – Ramnath Sep 27 '11 at 17:21`Ben Bolker`

. it is very elegant as it automatically computes the likelihood for you based on the specification. – Ramnath Sep 27 '11 at 19:35