What is the R equivalent of Matlab's fminunc function?

In order to compute the optimal theta e.g. in logistic regression, I have to create a costFunction (the function to be minimized) which is then passed to fminunc in order to obtain the optimal theta. Also, if the gradient of costFunction can be computed, I set the 'GradObj' option to 'on' using

``````options = optimset('GradObj','on');
``````

and code the costFunction so that it returns, as a second output argument, the gradient value g of X. Then I give

``````[theta, cost] = fminunc(@(t)(costFunction(t, X, y)), initial_theta, options);
``````

where X is the data matrix and y the response. How can I implement the above in R?

-
Take a look at the `optim` function. It can do unconstrained minimization using `method = 'L-BFGS-B'` and you can specify an analytical function to compute the gradient as well
EDIT. As Ben has pointed out correctly, `fminunc` does unconstrained optimization, which can also be achieved using the `optim` function choosing `Nelder-Mead` or `BFGS`. Moreover, I also noticed from the documentation of `fminunc` that it does large-scale optimization using `trust` region methods. There is an R package `trust` that I believe does the same thing. I would recommend taking a look at the `optimization` task view of R.
I'm confused, I thought that the OP was asking for unconstrained optimization and you are describing constrained optimization ... ? (Not that it matters that much, `optim` is the right answer in any case.) –  Ben Bolker Oct 27 '11 at 20:33