Mixed Poisson distribution
A mixed Poisson distribution is a univariate discrete probability distribution in stochastics. It results from assuming that a random variable is Poisson distributed, where the rate parameter itself is considered as a random variable. Hence it is a special case of a compound probability distribution. Mixed Poisson distributions can be found in actuarial mathematics as a general approach for the distribution of the number of claims and is also examined as an epidemiological model. It should not be confused with compound Poisson distribution or compound Poisson process.
Notation | |||
---|---|---|---|
Parameters | |||
Support | |||
PMF | |||
Mean | |||
Variance | |||
Skewness | |||
MGF | , with the MGF of π | ||
CF | |||
PGF |
Definition
A random variable X satisfies the mixed Poisson distribution with density π(λ) if it has the probability distribution
- .
If we denote the probabilities of the Poisson distribution by qλ(k), then
- .
Properties
- The variance is always bigger than the expected value. This property is called overdispersion. This is in contrast to the Poisson distribution where mean and variance are the same.
- In practice, almost only densities of gamma distributions, logarithmic normal distributions and inverse Gaussian distributions are used as densities π(λ). If we choose the density of the gamma distribution, we get the negative binomial distribution, which explains why this is also called the Poisson gamma distribution.
In the following be the expected value of the density and the variance of the density.
Characteristic function
The characteristic function has the form
- .
Where is the moment generating function of the density.
Examples
Theorem — Compounding a Poisson distribution with rate parameter distributed according to a gamma distribution yields a negative binomial distribution. Proof
Let be a density of a distributed random variable. Therefore we get . |
Theorem — Compounding a Poisson distribution with rate parameter distributed according to a exponential distribution yields a geometric distribution. Proof
Let be a density of a distributed random variable. Using integration by parts n times yields: Therefore we get . |
Table of mixed Poisson distributions
mixing distribution | mixed Poisson distribution[1] |
---|---|
gamma | negative binomial |
exponential | geometric |
inverse Gaussian | Sichel |
Poisson | Neyman |
generalized inverse Gaussian | Poisson-generalized inverse Gaussian |
generalized gamma | Poisson-generalized gamma |
generalized Pareto | Poisson-generalized Pareto |
inverse-gamma | Poisson-inverse gamma |
log-normal | Poisson-log-normal |
Lomax | Poisson–Lomax |
Pareto | Poisson–Pareto |
Pearson’s family of distributions | Poisson–Pearson family |
truncated normal | Poisson-truncated normal |
uniform | Poisson-uniform |
shifted gamma | Delaporte |
beta with specific parameter values | Yule |
Literature
- Jan Grandell: Mixed Poisson Processes. Chapman & Hall, London 1997, ISBN 0-412-78700-8 .
- Tom Britton: Stochastic Epidemic Models with Inference. Springer, 2019, doi:10.1007/978-3-030-30900-8
References
- Karlis, Dimitris (2005). "Mixed Poisson Distributions" (PDF).