# Structure of inputs to scipy minimize function

I have inherited some code that is trying to minimize a function using `scipy.optimize.minimize`. I am having trouble understanding some of the inputs to the `fun` and `jac` arguments

The call to minimize looks something like this:

``````result = minimize(func, jac=jac_func, args=(D_neg, D, C), method = 'TNC' ...other arguments)
``````

`func` looks like the following:

``````def func(G, D_neg, D, C):
#do stuff
``````

`jac_func` has the following structure:

``````def jac_func(G, D_neg, D, C):
#do stuff
``````

What I don't understand is where the `G` input to `func` and `jac_func` is coming from. Is that somehow specified in the `minimize` function, or by the fact that the `method` is specified as `TNC`? I've tried to do some research into the structure of this optimization function but I'm having trouble finding the answer I need. Any help is greatly appreciated

The short answer is that `G` is maintained by the optimizer as part of the minimization process, while the `(D_neg, D, and C)` arguments are passed in as-is from the `args` tuple.

By default, `scipy.optimize.minimize` takes a function `fun(x)` that accepts one argument `x` (which might be an array or the like) and returns a scalar. `scipy.optimize.minimize` then finds an argument value `xp` such that `fun(xp)` is less than `fun(x)` for other values of `x`. The optimizer is responsible for creating values of `x` and passing them to `fun` for evaluation.

But what if you happen to have a function `fun(x, y)` that has some additional parameter `y` that needs to be passed in separately (but is considered a constant for the purposes of the optimization)? This is what the `args` tuple is for. The documentation tries to explain how the args tuple is used, but it can be a little hard to parse:

args: tuple, optional

Extra arguments passed to the objective function and its derivatives (Jacobian, Hessian).

Effectively, `scipy.optimize.minimize` will pass whatever is in `args` as the remainder of the arguments to `fun`, using the asterisk arguments notation: the function is then called as `fun(x, *args)` during optimization. The `x` portion is passed in by the optimizer, and the `args` tuple is given as the remaining arguments.

So, in your code, the value of the `G` element is maintained by the optimizer while evaluating possible values of `G`, and the `(D_neg, D, C)` tuple is passed in as-is.

• Nice explanation! Usually you would give a guess as to what you expect `G` to be, say `G0`. So instead of the form in the OP, you'd use `minimize(func, jac=jac_func, G0, args=(...,), ...)`. If you don't pass one, it usually starts at `G=1.` I think it's less confusing in this form, even if `G0=1.` as well. – askewchan Nov 7 '13 at 20:20
• I agree, it'd be nice to be more explicit about the initial guess for `G0` -- in fact I'd never seen a call to `minimize` that omitted it. – lmjohns3 Nov 7 '13 at 21:27
• @lmjohns3 @askewchan: the initial guess `x0` is not an optional parameter, as you can see in the documentation. The user must always explicitly specify it, and there is no default value. – pv. Nov 7 '13 at 22:46
• @pv. sure enough, thanks ! I've updated my answer just a bit to make it sound less like the minimizer is creating values for `x` from nowhere. – lmjohns3 Nov 7 '13 at 22:56
• @pv. good catch --- as it happens almost all of the `scipy.optimize` functions require the starting point, except of course the one I used most recently: `curve_fit`, which indeed has a default of `1.0`. I wonder why it's missing from the OP. – askewchan Nov 8 '13 at 1:36