# Returning function output on array of values in R

I'm a beginner R programmer struggling with a multivariate array problem.

I'm attempting to input an array of 4 parameter values, say `a=1:10, b=1:10, p=1:10, q=1:10`, into a function `y=f(x|a, b, p, q)` that calculates values of y based on my dataset, x, and every possible combination of the given 4 parameters `[(a=1,b=1,p=1,q=1),(a=2,b=1,p=1,q=1),...,(a=10,b=1,p=1,q=1),...,(a=10,b=10,p=10,q=10)]` = 10^4 = 10,000 possible combinations and therefore 10,000 y values.

Ideally I'd like the output to be in an array format which I can then graph in R, allowing each parameter to be plotted as a separate axis.

If anyone could point me in the right direction it would be much appreciated!

Thanks,

Robert

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Robert, no disrespect intended, but you're not really asking a question. There are a number of steps needed to do what you're asking and it's impossible to tell from your question where you are hung. The best beginner R skill you can grab right now is decomposing your problem into steps. Then try to do each step. If you can't do a step, break that into a single question and show a simple example of what you want and what you've tried. – JD Long Apr 6 '11 at 21:23
agreed with JD. In trying to compose an answer, I realized that I'm pretty much going to end up coding every step. – Maiasaura Apr 6 '11 at 22:32
Yes, sorry about that, should have been more clear. I'm trying to map out the negative log-likelihood of a four parameter probability distribution (the Generalized Beta of the 2nd Kind) to help me find the best fit (= minimum negative log-likelihood) to my insurance claims data. There are various iterative algorithms available in SAS and R, but I've been having problems with them producing stable results as I vary the values of the initial parameters. So I'm going with the "eyeball" approach to locate the best initial parameters. – Robert Apr 12 '11 at 13:18

``````all.comb.dfrm  <- expand.grid(a=1:10, b=1:10, p=1:10, q=1:10)