Revision as of 04:50, 5 October 2005 editPAR (talk | contribs)Autopatrolled, Extended confirmed users, Pending changes reviewers11,662 edits Standard notation← Previous edit | Revision as of 22:46, 16 October 2005 edit undoJYOuyang (talk | contribs)Extended confirmed users2,150 editsm disambiguation link repair (You can help!)Next edit → | ||
Line 37: | Line 37: | ||
The median is <math>\mu-\beta \ln(-\ln(0.5))</math> | The median is <math>\mu-\beta \ln(-\ln(0.5))</math> | ||
The mean is <math>\mu+\gamma\beta</math> where <math>\gamma</math> = ] = 0.57721... | The mean is <math>\mu+\gamma\beta</math> where <math>\gamma</math> = ] = 0.57721... | ||
The standard deviation is | The standard deviation is |
Revision as of 22:46, 16 October 2005
Probability density function Fisher-Tippett distribution: μ=0, β=1 | |||
Cumulative distribution functionFile:None uploaded yet. | |||
Parameters |
location (real) scale (real) | ||
---|---|---|---|
Support | |||
where | |||
CDF | |||
Mean | |||
Median | |||
Mode | |||
Variance | |||
Skewness | |||
Excess kurtosis | |||
Entropy |
for | ||
MGF | |||
CF |
In probability theory and statistics the Gumbel distribution is used to find the minimum (or the maximum) of a number of samples of various distributions. For example we would use it to find the maximum level of a river in a particular year if we had the list of maximum values for the past ten years. It is therefore useful in predicting the chance that an extreme earthquake, flood or other natural disaster will occur.
The distribution of the samples could be of the normal or exponential type. The Gumbel distribution, and similar distributions, are used in extreme value theory.
In particular, the Gumbel distribution is a special case of the Fisher-Tippett distribution, also known as the log-Weibull distribution.
Properties
The cumulative distribution function is
The Gumbel distribution is the case where μ = 0 and β = 1.
The median is
The mean is where = Euler-Mascheroni constant = 0.57721...
The standard deviation is
The mode is μ.
Parameter estimation
A more practical way of using the distribution could be
where M is the median. To fit values one could get the median straight away and then vary μ until it fits the list of values.
Generating Fisher-Tippett variates
Given a random variate U drawn from the uniform distribution in the interval (0, 1], the variate
has a Fisher-Tippett distribution with parameters μ and β. This follows from the form of the cumulative distribution function given above.