List of probability distributions


Many probability distributions that are important in theory or applications have been given specific names.

Discrete distributions

Image:Binomial distribution pmf.svg|thumb|Binomial distribution
Image:Degenerate distribution PMF.png|thumb|Degenerate distribution

With finite support">Support (mathematics)">support

Image:Poisson pmf.svg|thumb|Poisson distribution
Image:Skellam distribution.svg|thumb|Skellam distribution

With infinite support

Absolutely continuous distributions

Image:Beta distribution pdf.png|thumb|Beta distribution

Supported on a bounded interval

Image:Chi-square distributionPDF.png|thumb|Chi-squared distribution
Image:Gamma distribution pdf.svg|thumb|Gamma distribution
Image:PDF_of_Pareto_Distribution.svg|thumb|Pareto distribution

Supported on intervals of length 2 – directional distributions

Supported on semi-infinite intervals, usually 0,∞)

Image:Cauchy pdf.svg|thumb|Cauchy distribution
Image:Laplace distribution pdf.png|thumb|Laplace distribution
Image:LevyDistribution.png|thumb|Stable distribution

Supported on the whole real line

With variable support

  • The generalized extreme value distribution has a finite upper bound or a finite lower bound depending on what range the value of one of the parameters of the distribution is in (or is supported on the whole real line for one special value of the parameter
  • The generalized Pareto distribution has a support which is either bounded below only, or bounded both above and below
  • The metalog distribution, which provides flexibility for unbounded, bounded, and semi-bounded support, is highly shape-flexible, has simple closed forms, and can be fit to data using linear least squares.
  • The Tukey lambda distribution is either supported on the whole real line, or on a bounded interval, depending on what range the value of one of the parameters of the distribution is in.
  • The Wakeby distribution

Mixed discrete/continuous distributions

Joint distributions

For any set of independent random variables the probability density function of their joint distribution is the product of their individual density functions.

Two or more random variables on the same sample space

Distributions of matrix-valued random variables

Non-numeric distributions

Miscellaneous distributions