# Simulate samples from a joint cumulative distribution function?

I have a joint density function for two independent variables X and Y. And I now want to sample new x,y from this distribution.

What I believe I have to do is to find the joint cumulative distribution and then somehow sample from it. I kinda know how to do this in 1D, but I find it really hard to understand how to do it in 2D.

I also used the matlab function `cumtrapz` to find the cumulative distribution function for the above pdf.

Just to be clear, what i want to do is to sample random values x,y from this empirical distribution.

Can someone please point me in the right direction here?!

EDIT: I have data values and I use [pdf bins] = hist3([N Y])

I then normalize the pdf and do

cumulativeDistribution = cumtrapz(pdfNormalize)

And yes (to the comment below) X,Y are suppose to be independent.

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What's the joint density function? –  Abhranil Das Apr 18 '12 at 11:48
If your variables are independent, your joint distribution is simply the product of marginals. Are you sure that's what you meant? –  Memming Apr 18 '12 at 15:00
Do you have analytic formulae for your joint density? Or are you estimating from samples? What are you using to estimate the joint? –  Memming Apr 18 '12 at 15:05