I am writing a machine learning/classification algorithm in ruby, and I would like to optimize for some of the parameters in my algorithm. I have 4 variables, p, x, y, and z, where 0 <= x + y + z <= 1 and 0 <= p <= 1. Clearly, this is an optimization problem.

However, because the thing I am trying to maximize is not a mathematical function per se (i.e. cannot be represented in a matrix, no obvious notion of derivative, etc) but rather a call to a program, where the return value is its classification accuracy, I cannot find the right tool for the job. The program takes about 5 minutes per run, so it's super expensive to begin with. Does anyone know of any ruby libraries that will do what I need? Or do I need to switch to another language? (In which case, how do I optimize a program written in ruby using a script in another language?)

Things I've tried/looked at:

rglpk - has linear programming, but my objective function is (clearly) non linear

SciRuby - not fully developed (e.g. doesn't have an equivalent for SciPy.optimize)

rbgsl - so close. I can specify my own objective function (nonlinear). I can specify a step function and multiple variables to be optimized. But I can seem to specify bounds on the variables, despite the c version of multimin having an argument to specify those constraints. Am I missing something?

`...but rather a call to a program, where the return value is its classification accuracy`

-- That's a function. – Robert Harvey♦ May 13 '13 at 18:20