# Given a random variable with probability density function f(x), how to compute the expected value of this random variable in R?

Given a random variable with probability density function f(x), how to compute the expected value of this random variable in R?

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If you want to compute the expected value, just compute :

E(X) = Integral of xf(x)dx over the whole domain of X.

The integration can easily be done using the function integrate().

Say you're having a normal density function (you can easily define your own density function) :

``````f <- function(x){
1/sqrt(2*pi)*exp((-1/2)*x^2)
}
``````

You calculate the expected value simply by:

``````f2 <- function(x){x*f(x)}
integrate(f2,-Inf,Inf )
``````

Pay attention, sometimes you need to use Vectorize() for your function. This is necessary to get integrate to work. For more info, see the help pages of integrate() and Vectorize().

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Why `Vectorize` is needed? `f2` is already vectorized function. Or I missed something? –  Marek Sep 8 '10 at 11:40
In this case, it is. I just wanted to point out the obvious error when using integrate. I've seen it many times before. I'll correct –  Joris Meys Sep 8 '10 at 12:31
Does it help to know that the expectation E is the integral of `x*f(x) dx` for `x` in `(-inf, inf)`?