I want to test whether the skewness of the samples(from A:900*1 matrix) converge to 0 or not by using Montecarlo simulation.

3 vues (au cours des 30 derniers jours)
Hi,
I want to test whether the skewness of the samples(from A:900*1 matrix) converge to 0 or not by using Montecarlo simulation.
In this case, what codes do I have to revise...?
load('file')
nn=100; %effective sample sizes
for n=1:1000;
~~~~~~~~~~~
ss(n)=std(r);
m(n)=mean(r);
med(n)=median(r);
nu(n)=numel(r)
skew_FP(n) = sum((r-m(n)).^3)/(length(n)-1)/ss(n).^3
end
hist(skew_FP())
xlabel('Skew_FP()')
ylabel('Frequency')

Réponses (1)

Aditya
Aditya le 8 Sep 2023
Hello Chris,
I have reviewed your code and would like to suggest some changes to improve it:
  • Before the for loop, please define the skew_FP array as follows: skew_FP = zeros(1000, 1);. This will initialize the array with zeros to store the skewness values
  • To generate the r array, you can use the randpermfunction. It allows you to randomly select k samples from the range of n. For example: r = randperm(n, k);
  • Instead of manually calculating the skewness, you can utilize the built-in MATLAB function skewness. This function will compute the skewness of the r array directly. You can assign the result to skew_FP(n) as follows: skew_FP(n) = skewness(r);
For further details on these functions, please refer to the following documentation:
Hope this helps!

Catégories

En savoir plus sur Nonlinear Dynamics dans Help Center et File Exchange

Produits

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by