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How to pick the j-th percentile of a distribution?

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pietro
pietro am 6 Jun. 2014
Kommentiert: Marco Soldati am 4 Apr. 2018
Hi all,
I have some data and I want to pick the j-th percentile of the distribution.
Here an example:
a=2000;
b=300;
c=a+(b)*randn(100,1);
cdfval = fitdist(arg_1, 'normal');
So how can I get the 50° percentile of the distribution, that it is 2000?
thanks

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Star Strider
Star Strider am 6 Jun. 2014
Since you have the Statistics Toolbox, use the prctile function.
  5 Kommentare
Star Strider
Star Strider am 6 Jun. 2014
Bearbeitet: Star Strider am 6 Jun. 2014
Change this line to:
pctval = prctile(pdfval,95)
to get the 95th percentile.
If you want to get every percentile from the 5th to the 95th, put the call in a loop:
a=2000;
b=300;
pdfval = a + b*randn(100000,1);
pctl = 5:5:95;
for k1 = 1:length(pctl)
pctval(k1,:) = [pctl(k1) prctile(pdfval,pctl(k1))];
end
The pctval array now has the information as:
pctval =
5.0000e+000 1.5063e+003
10.0000e+000 1.6155e+003
15.0000e+000 1.6915e+003
. . .
with the percentile in the first column and the percentile value for your data in the second column.
Take out these lines:
prova=fitdist(c,'normal');
pdfval=pdf(prova,linspace(a-4*b,a+4*b,100));
and just use the code I included here. These lines will simply make things more complicated and will give you wrong answers if your actual data are not normally distributed. The prctile function does everything you need.
Marco Soldati
Marco Soldati am 4 Apr. 2018
Hi all, do you know how to get the confidence interval for a given percentile?

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Weitere Antworten (1)

pietro
pietro am 6 Jun. 2014
You're on right, Thanks
  3 Kommentare
pietro
pietro am 7 Jun. 2014
Supposing I have few numbers got by experiment that I know from a theory they are distributed according to a specific distribution. If I'm not lucky to get spread values using prctile(numbers) I'll never get the real percentile of the distribution because the percentiles are limited by the experimental data. Therefore I need to compute the percentiles from a distribution. In this case, how can I compute them? Generating casual numbers according to the fitted distribution and then using prctile?
Star Strider
Star Strider am 7 Jun. 2014
If you know the distribution, then estimate its parameters from your experimental data (the fitdist function is probably best here) and calculate the percentiles from the cumulative distribution function for that distribution. Use the icdf function for the appropriate distribution, Don’t use prctile in that situation.

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