Binomial process: Difference between revisions
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: <math> \xi= \sum_{i=1}^n \delta_{X_i}, </math> |
: <math> \xi= \sum_{i=1}^n \delta_{X_i}, </math> |
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where <math>\delta_{X_i(A)}=\begin{cases}1, &\text{if }X_i\in A\\ 0, &\text{otherwise}.\end{cases}</math> |
where <math>\delta_{X_i(A)}=\begin{cases}1, &\text{if }X_i\in A,\\ 0, &\text{otherwise}.\end{cases}</math> |
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== Properties == |
== Properties == |
Latest revision as of 06:22, 2 December 2019
A binomial process is a special point process in probability theory.
Definition
[edit]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
Properties
[edit]Name
[edit]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 :
Laplace-transform
[edit]The Laplace transform of a binomial process is given by
for all positive measurable functions .
Intensity measure
[edit]The intensity measure of a binomial process is given by
Generalizations
[edit]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 .
Literature
[edit]- Kallenberg, Olav (2017). Random Measures, Theory and Applications. Switzerland: Springer. doi:10.1007/978-3-319-41598-7. ISBN 978-3-319-41596-3.