A binomial process is a special point process in probability theory.
Let
be a probability distribution and
be a fixed natural number. Let
be i.i.d. random variables with distribution
, so
for all
.
Then the binomial process based on n and P is the random measure

where
The name of a binomial process is derived from the fact that for all measurable sets
the random variable
follows a binomial distribution with parameters
and
:

The Laplace transform of a binomial process is given by
![{\displaystyle {\mathcal {L}}_{P,n}(f)=\left[\int \exp(-f(x))\mathrm {P} (dx)\right]^{n}}](https://wikimedia.org/api/rest_v1/media/math/render/svg/83b07eff25e85fe781764d51273e3930676a6cd5)
for all positive measurable functions
.
The intensity measure
of a binomial process
is given by

A generalization of binomial processes are mixed binomial processes. In these point processes, the number of points is not deterministic like it is with binomial processes, but is determined by a random variable
. Therefore mixed binomial processes conditioned on
are binomial process based on
and
.