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# Numerical integration of numerical function in R

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 stats.stackexchange.comNov 23 '12 at 15:05

This question came from our site for people interested in statistics, machine learning, data analysis, data mining, and data visualization.

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