In statistics, the Fisher–Tippett–Gnedenko theorem (also the Fisher–Tippett theorem or the extreme value theorem) is a general result in extreme value theory regarding asymptotic distribution of extreme order statistics.
The maximum of a sample of iid random variables after proper renormalization can only converge in distribution to one of three possible distribution families: the Gumbel distribution, the Fréchet distribution, or the Weibull distribution.
Credit for the extreme value theorem and its convergence details are given to Fréchet (1927),[1] Fisher and Tippett (1928),[2] Mises (1936),[3][4] and Gnedenko (1943).
[5] The role of the extremal types theorem for maxima is similar to that of central limit theorem for averages, except that the central limit theorem applies to the average of a sample from any distribution with finite variance, while the Fisher–Tippet–Gnedenko theorem only states that if the distribution of a normalized maximum converges, then the limit has to be one of a particular class of distributions.
It does not state that the distribution of the normalized maximum does converge.
be an n-sized sample of independent and identically-distributed random variables, each of whose cumulative distribution function is
Suppose that there exist two sequences of real numbers
such that the following limits converge to a non-degenerate distribution function: or equivalently: In such circumstances, the limiting function
is the cumulative distribution function of a distribution belonging to either the Gumbel, the Fréchet, or the Weibull distribution family.
[6] In other words, if the limit above converges, then up to a linear change of coordinates
will assume either the form:[7] with the non-zero parameter
value supported by
[clarification needed] Otherwise it has the form: This is the cumulative distribution function of the generalized extreme value distribution (GEV) with extreme value index
The GEV distribution groups the Gumbel, Fréchet, and Weibull distributions into a single composite form.
The Fisher–Tippett–Gnedenko theorem is a statement about the convergence of the limiting distribution
The study of conditions for convergence of
to particular cases of the generalized extreme value distribution began with Mises (1936)[3][5][4] and was further developed by Gnedenko (1943).
[5] The limiting distribution of the normalized sample maximum, given by
Note that the second formula (the Gumbel distribution) is the limit of the first (the Fréchet distribution) as
The Cauchy distribution's density function is: and its cumulative distribution function is: A little bit of calculus show that the right tail's cumulative distribution
(and skipping some explanation) for any
Let us take the normal distribution with cumulative distribution function We have and thus Hence we have If we define
as the value that exactly satisfies then around
increases, this becomes a good approximation for a wider and wider range of
we find that Equivalently, With this result, we see retrospectively that we need
and then so the maximum is expected to climb toward infinity ever more slowly.
We may take the simplest example, a uniform distribution between 0 and 1, with cumulative distribution function For values of
and get Close examination of that limit shows that the expected maximum approaches 1 in inverse proportion to n .