The moment generating function of a random variable is another way of expressing its probability distribution and means many analytic results can be derived via another route. There are particularly simple results for the moment-generating functions of distributions defined by the weighted sums of random variables.
The moment-generating function of a random variable X is![]()
wherever this expectation exists.
always exists and is equal to 1.
Moments and the moment-generating function may not exist, as the integrals need not converge. By contrast, the characteristic function always exists (because it is the integral of a bounded function on a space of finite measure), and thus may be used instead.
More generally, where
an
- dimensional random vector, one uses
instead of![]()
The moment generating function can be used to find all the moments of the distribution. The series expansion of
is
![]()
where
is the ith moment.
If we differentiate![]()
times with respect to
and then set
we obtain the ith moment,
Some moment generating functions are shown below.
|
Distribution |
Moment-generating function MX(t) |
|---|---|
|
Binomial |
|
|
Poisson |
|
|
Uniform |
|
|
Normal |
|
|
Chi-square |
|
|
Gamma |
|
|
Exponential |
|
|
Laplace |
|
|
Negative Binomial NB(r, p) |
|
The moment-generating function is so called because if it exists on an open interval around
then it is the exponential generating function of the moments of the probability distribution:
![]()