Confidence Interval for an extreme value distribution

Hi!
I have a data set of output variables from a Monte Carlo simulation, which follow a Gumbel distribution. How do I determnie a 95 % confidence interval of my data based on the estimated distribution paramters? My data describes wind speeds. I want to say that a 95 % confidence interval covers a wind speed range from e.g. 10 to 20 m/s.
I've searched around in the statistical toolbox documentation, but can't find what I'm looking for.
Thank you! Tori

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Oleg Komarov
Oleg Komarov am 31 Mai 2011

1 Stimme

http://www.mathworks.com/help/toolbox/stats/bqt29ct.html look for extreme value or generalized extreme value distributions.

4 Kommentare

Tori
Tori am 31 Mai 2011
Thank you, but could you give me a more detailed description?
I have had a look at these functions, but cannot see how to use them to evaluate a Gumbel distribution.
If you don't have the parameters of the distribution then use the corresponding fit functions:
[parmhat,parmci] = evfit(data)
where by default parmci are the values at the 95% confidence.
Tori
Tori am 31 Mai 2011
Thank you Oleg. I think I found the solution. I can use the evinv function to describe a Gumbel distribution if I "mirror" my distribution (multiply with -1). Do you agree with me that the line
X = evinv([0.025 0.975],muMLE,sigmaMLE)
where muMLE and sigmaMLE is the estimated distribution parameters, will give me a 95 % confidence interval in X?
Yes, exactly.

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