Generalized Extreme Value Distribution

In probability theory and statistics, the generalized extreme value (GEV) distribution is a family of continuous probability distributions developed within extreme value theory to combine the Gumbel, Fréchet and Weibull families also known as type I, II and III extreme value distributions.

By the extreme value theorem the GEV distribution is the only possible limit distribution of properly normalized maxima of a sequence of independent and identically distributed random variables. Note that a limit distribution needs to exist, which requires regularity conditions on the tail of the distribution. Despite this, the GEV distribution is often used as an approximation to model the maxima of long (finite) sequences of random variables.

Notation
Parameters   μ   ∈   ℝ   —   location,
  σ   >   0   —   scale,
  ξ   ∈   ℝ   —   shape.
Support

  x   ∈   [ μ - σ/ ξ , +∞ )   when   ξ > 0 ,
  x   ∈   ( −∞, +∞ )        when   ξ = 0 ,

  x   ∈   ( −∞, μ - σ/ ξ ]   when   ξ < 0  .
 
PDF


where  
CDF   for   support (see above)
Mean


where   gkΓ( 1 − k ξ ) , (see Gamma function)
and     is Euler’s constant.
Median
Mode
Variance
Skewness


where is the sign function
and is the Riemann zeta function
Excess kurtosis
Entropy
MGF see Muraleedharan, Soares & Lucas (2011)
CF see Muraleedharan, Soares & Lucas (2011)
Expected shortfall
where is the lower incomplete gamma function and is the logarithmic integral function.

In some fields of application the generalized extreme value distribution is known as the Fisher–Tippett distribution, named after Ronald Fisher and L. H. C. Tippett who recognised three different forms outlined below. However usage of this name is sometimes restricted to mean the special case of the Gumbel distribution. The origin of the common functional form for all 3 distributions dates back to at least Jenkinson, A. F. (1955), though allegedly it could also have been given by von Mises, R. (1936).

Specification

Using the standardized variable Generalized Extreme Value Distribution  where Generalized Extreme Value Distribution  the location parameter, can be any real number, and Generalized Extreme Value Distribution  is the scale parameter; the cumulative distribution function of the GEV distribution is then

    Generalized Extreme Value Distribution 

where Generalized Extreme Value Distribution  the shape parameter, can be any real number. Thus, for Generalized Extreme Value Distribution  the expression is valid for Generalized Extreme Value Distribution  while for Generalized Extreme Value Distribution  it is valid for Generalized Extreme Value Distribution  In the first case, Generalized Extreme Value Distribution  is the negative, lower end-point, where Generalized Extreme Value Distribution  is  0 ; in the second case, Generalized Extreme Value Distribution  is the positive, upper end-point, where Generalized Extreme Value Distribution  is 1. For Generalized Extreme Value Distribution  the second expression is formally undefined and is replaced with the first expression, which is the result of taking the limit of the second, as Generalized Extreme Value Distribution  in which case Generalized Extreme Value Distribution  can be any real number.

In the special case of Generalized Extreme Value Distribution  so Generalized Extreme Value Distribution  and Generalized Extreme Value Distribution  for whatever values Generalized Extreme Value Distribution  and Generalized Extreme Value Distribution  might have.

The probability density function of the standardized distribution is

    Generalized Extreme Value Distribution 

again valid for Generalized Extreme Value Distribution  in the case Generalized Extreme Value Distribution  and for Generalized Extreme Value Distribution  in the case Generalized Extreme Value Distribution  The density is zero outside of the relevant range. In the case Generalized Extreme Value Distribution  the density is positive on the whole real line.

Since the cumulative distribution function is invertible, the quantile function for the GEV distribution has an explicit expression, namely

    Generalized Extreme Value Distribution 

and therefore the quantile density function, Generalized Extreme Value Distribution  is

    Generalized Extreme Value Distribution 

valid for Generalized Extreme Value Distribution  and for any real Generalized Extreme Value Distribution 

Generalized Extreme Value Distribution 

Summary statistics

Some simple statistics of the distribution are:[citation needed]

    Generalized Extreme Value Distribution  for Generalized Extreme Value Distribution 
    Generalized Extreme Value Distribution 
    Generalized Extreme Value Distribution 

The skewness is for ξ>0

    Generalized Extreme Value Distribution 

For ξ < 0, the sign of the numerator is reversed.

The excess kurtosis is:

    Generalized Extreme Value Distribution 

where Generalized Extreme Value Distribution  Generalized Extreme Value Distribution  and Generalized Extreme Value Distribution  is the gamma function.

The shape parameter Generalized Extreme Value Distribution  governs the tail behavior of the distribution. The sub-families defined by three cases: Generalized Extreme Value Distribution  Generalized Extreme Value Distribution  and Generalized Extreme Value Distribution  these correspond, respectively, to the Gumbel, Fréchet, and Weibull families, whose cumulative distribution functions are displayed below.

  • Type I or Gumbel extreme value distribution, case Generalized Extreme Value Distribution  for all Generalized Extreme Value Distribution 
    Generalized Extreme Value Distribution 
  • Type II or Fréchet extreme value distribution, case Generalized Extreme Value Distribution  for all Generalized Extreme Value Distribution 
    Let Generalized Extreme Value Distribution  and Generalized Extreme Value Distribution 
    Generalized Extreme Value Distribution 
  • Type III or reversed Weibull extreme value distribution, case Generalized Extreme Value Distribution  for all Generalized Extreme Value Distribution 
    Let Generalized Extreme Value Distribution  and Generalized Extreme Value Distribution 
    Generalized Extreme Value Distribution 

The subsections below remark on properties of these distributions.

Modification for minima rather than maxima

The theory here relates to data maxima and the distribution being discussed is an extreme value distribution for maxima. A generalised extreme value distribution for data minima can be obtained, for example by substituting Generalized Extreme Value Distribution  for Generalized Extreme Value Distribution  in the distribution function, and subtracting the cumulative distribution from one: That is, replace Generalized Extreme Value Distribution  with Generalized Extreme Value Distribution  . Doing so yields yet another family of distributions.

Alternative convention for the Weibull distribution

The ordinary Weibull distribution arises in reliability applications and is obtained from the distribution here by using the variable Generalized Extreme Value Distribution  which gives a strictly positive support, in contrast to the use in the formulation of extreme value theory here. This arises because the ordinary Weibull distribution is used for cases that deal with data minima rather than data maxima. The distribution here has an addition parameter compared to the usual form of the Weibull distribution and, in addition, is reversed so that the distribution has an upper bound rather than a lower bound. Importantly, in applications of the GEV, the upper bound is unknown and so must be estimated, whereas when applying the ordinary Weibull distribution in reliability applications the lower bound is usually known to be zero.

Ranges of the distributions

Note the differences in the ranges of interest for the three extreme value distributions: Gumbel is unlimited, Fréchet has a lower limit, while the reversed Weibull has an upper limit. More precisely, Extreme Value Theory (Univariate Theory) describes which of the three is the limiting law according to the initial law X and in particular depending on its tail.

Distribution of log variables

One can link the type I to types II and III in the following way: If the cumulative distribution function of some random variable Generalized Extreme Value Distribution  is of type II, and with the positive numbers as support, i.e. Generalized Extreme Value Distribution  then the cumulative distribution function of Generalized Extreme Value Distribution  is of type I, namely Generalized Extreme Value Distribution  Similarly, if the cumulative distribution function of Generalized Extreme Value Distribution  is of type III, and with the negative numbers as support, i.e. Generalized Extreme Value Distribution  then the cumulative distribution function of Generalized Extreme Value Distribution  is of type I, namely Generalized Extreme Value Distribution 


Multinomial logit models, and certain other types of logistic regression, can be phrased as latent variable models with error variables distributed as Gumbel distributions (type I generalized extreme value distributions). This phrasing is common in the theory of discrete choice models, which include logit models, probit models, and various extensions of them, and derives from the fact that the difference of two type-I GEV-distributed variables follows a logistic distribution, of which the logit function is the quantile function. The type-I GEV distribution thus plays the same role in these logit models as the normal distribution does in the corresponding probit models.

Properties

The cumulative distribution function of the generalized extreme value distribution solves the stability postulate equation.[citation needed] The generalized extreme value distribution is a special case of a max-stable distribution, and is a transformation of a min-stable distribution.

Applications

  • The GEV distribution is widely used in the treatment of "tail risks" in fields ranging from insurance to finance. In the latter case, it has been considered as a means of assessing various financial risks via metrics such as value at risk.
Generalized Extreme Value Distribution 
Fitted GEV probability distribution to monthly maximum one-day rainfalls in October, Surinam
  • However, the resulting shape parameters have been found to lie in the range leading to undefined means and variances, which underlines the fact that reliable data analysis is often impossible.
  • In hydrology the GEV distribution is applied to extreme events such as annual maximum one-day rainfalls and river discharges. The blue picture, made with CumFreq, illustrates an example of fitting the GEV distribution to ranked annually maximum one-day rainfalls showing also the 90% confidence belt based on the binomial distribution. The rainfall data are represented by plotting positions as part of the cumulative frequency analysis.

Example for Normally distributed variables

Let Generalized Extreme Value Distribution  be i.i.d. normally distributed random variables with mean 0 and variance 1. The Fisher–Tippett–Gnedenko theorem tells us that Generalized Extreme Value Distribution  where

Generalized Extreme Value Distribution 

This allow us to estimate e.g. the mean of Generalized Extreme Value Distribution  from the mean of the GEV distribution:

Generalized Extreme Value Distribution 

where Generalized Extreme Value Distribution  is the Euler–Mascheroni constant.

  1. If Generalized Extreme Value Distribution  then Generalized Extreme Value Distribution 
  2. If Generalized Extreme Value Distribution  (Gumbel distribution) then Generalized Extreme Value Distribution 
  3. If Generalized Extreme Value Distribution  (Weibull distribution) then Generalized Extreme Value Distribution 
  4. If Generalized Extreme Value Distribution  then Generalized Extreme Value Distribution  (Weibull distribution)
  5. If Generalized Extreme Value Distribution  (Exponential distribution) then Generalized Extreme Value Distribution 
  6. If Generalized Extreme Value Distribution  and Generalized Extreme Value Distribution  then Generalized Extreme Value Distribution  (see Logistic distribution).
  7. If Generalized Extreme Value Distribution  and Generalized Extreme Value Distribution  then Generalized Extreme Value Distribution  (The sum is not a logistic distribution).
      Note that Generalized Extreme Value Distribution 

Proofs

4. Let Generalized Extreme Value Distribution  then the cumulative distribution of Generalized Extreme Value Distribution  is:

    Generalized Extreme Value Distribution 
    which is the cdf for Generalized Extreme Value Distribution 

5. Let Generalized Extreme Value Distribution  then the cumulative distribution of Generalized Extreme Value Distribution  is:

    Generalized Extreme Value Distribution 
    which is the cumulative distribution of Generalized Extreme Value Distribution 

See also

References

Further reading

Tags:

Generalized Extreme Value Distribution SpecificationGeneralized Extreme Value Distribution Summary statisticsGeneralized Extreme Value Distribution Link to Fréchet, Weibull, and Gumbel familiesGeneralized Extreme Value Distribution Link to logit models (logistic regression)Generalized Extreme Value Distribution PropertiesGeneralized Extreme Value Distribution ApplicationsGeneralized Extreme Value Distribution Related distributionsGeneralized Extreme Value Distribution Further readingGeneralized Extreme Value DistributionExtreme value theoryFisher–Tippett–Gnedenko theoremFréchet distributionGumbel distributionProbability distributionProbability theoryStatisticsWeibull distribution

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