# How do I calculate the probability for a given quantile in R?

Using R, it is trivial to calculate the quantiles for given probabilities in a sampled distribution:

``````x <- rnorm(1000, mean=4, sd=2)
quantile(x, .9) # results in 6.705755
``````

However, I can't find an easy way to do the inverse—calculate the probability for a given quantile in the sample `x`. The closest I've come is to use `pnorm()` with the same mean and standard deviation I used when creating the sample:

``````pnorm(5, mean=4, sd=2) # results in 0.6914625
``````

However, because this is calculating the probability from the full normal distribution, and not the sample `x`, it's not entirely accurate.

Is there a function that essentially does the inverse of `quantile()`? Something that essentially lets me do the same thing as `pnorm()` but with a sample? Something like this:

``````backwards_quantile(x, 5)
``````

I've found the `ecdf()` function, but can't figure out a way to make it result in a single probability instead of a full equation object.

-

`ecdf` returns a function: you need to apply it.
``````f <- ecdf(x)
In the example shown in the original post, you would actually have to run `ecdf(x)(5)` in order to find the quantile of 5 given `x` (approx. 0.697 given seed 123). –  Waldir Leoncio Feb 14 at 14:05