Generalized Pareto distribution
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| Parameters | location (real) |
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| Support | ![]()
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![]() where |
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| CDF | ![]() |
| Mean | ![]() |
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| Variance | ![]() |
In statistics, the generalized Pareto distribution (GPD) is a family of continuous probability distributions. It is often used to model the tails of another distribution. It is specified by three parameters: location
, scale
, and shape
.[1][2] Sometimes it is specified by only scale and shape[3] and sometimes only by its shape parameter. Some references give the shape parameter as
.[4]
Contents |
Definition [edit]
The standard GPD is defined by[5]
where the support is
for
and
for
. The related location-scale family of distributions is obtained by replacing the argument z by
and adjusting the support accordingly.
Characterization [edit]
The cumulative distribution function is
for
when
, and
when
, where
,
, and
.
The probability density function is
or
again, for
, and
when
.
Special cases [edit]
- If the shape
and location
are both zero, the GPD is equivalent to the exponential distribution. - With shape
and location
, the GPD is equivalent to the Pareto distribution.
Generating generalized Pareto random variables [edit]
If U is uniformly distributed on (0, 1], then
and
Both formulas are obtained by inversion of the cdf.
In Matlab Statistics Toolbox, you can easily use "gprnd" command to generate generalized Pareto random numbers.
With GNU R you can use the packages POT or evd with the "rgpd" command (see for exact usage: http://rss.acs.unt.edu/Rdoc/library/POT/html/simGPD.html)
See also [edit]
Notes [edit]
- ^ Coles, Stuart. An Introduction to Statistical Modeling of Extreme Values. Springer. p. 75.
- ^ Dargahi-Noubary, G. R. (1989). "On tail estimation: An improved method". Mathematical Geology 21 (8): 829–842. doi:10.1007/BF00894450.
- ^ Hosking, J. R. M.; Wallis, J. R. (1987). "Parameter and Quantile Estimation for the Generalized Pareto Distribution". Technometrics 29 (3): 339–349. doi:10.2307/1269343.
- ^ Davison, A. C. "Modelling Excesses over High Thresholds, with an Application". In de Oliveira, J. Tiago. Statistical Extremes and Applications. Kluwer. p. 462.
- ^ Embrechts, Paul; Klüppelberg, Claudia; Mikosch, Thomas. Modelling extremal events for insurance and finance. p. 162.
References [edit]
- Pickands, James (1975), "Statistical inference using extreme order statistics", Annals of Statistics 3: 119–131
- Balkema, A.; Laurens de Haan (1974), "Residual life time at great age", Annals of Probability 2: 792–804
- N. L. Johnson, S. Kotz, and N. Balakrishnan (1994). Continuous Univariate Distributions Volume 1, second edition. New York: Wiley. ISBN 0-471-58495-9. Text "." ignored (help) Chapter 20, Section 12: Generalized Pareto Distributions.
- Barry C. Arnold (2011). "Chapter 7: Pareto and Generalized Pareto Distributions". In Duangkamon Chotikapanich. Modeling Distributions and Lorenz Curves. New York: Springer. Text "." ignored (help)
- Arnold, B. C. and Laguna, L. (1977). On generalized Pareto distributions with applications to income data. Ames, Iowa: Iowa State University, Department of Economics. Text "." ignored (help)
External links [edit]
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and location
, the GPD is equivalent to the 
