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I'm, trying to apply this solution to find the p-value in an arbitrary distribution defined from data experiments. I have estimated this distribution using the density function in R. Now, I would like to integrate this function to apply the solution proposed by @mpiktas. However, the integrate function requires a function as input, not two vectors x and y with the values that define the function, which is what density provides.

Any idea on how to deal with this numerical integration based on x-*y* values in R?

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migrated from Nov 23 '12 at 15:05

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In this answer I implemented a KDE using a Gaussian kernel, which coincides with the one produced by density() using the default options. You can also find there how to combine it with integrate(). Note that the kernel CDF is also implemented using the same bandwidth (therefore, if this is what you need, the integration step is not necessary). – user1378672 Nov 23 '12 at 13:05
Yes, I'm pretty much interested in how to get this done in R, although I'm open to other statistical approaches to solve my broader problem, which is why I pointed out to the other question to contextualize mine. Anyway I will flag this one to be moved to Stack Overflow. Thanks for the advice. – Onturenio Nov 23 '12 at 14:18
We'd be happy to show you how to do it, but you need to provide that definition of this distribution using R code. (It may require integration, but that will be determined by how you offer the definiton of hte distribution.) – 42- Nov 23 '12 at 16:03

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