KS TEST fails at 0.05 but passes at 0.01
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Muhammad Abdullah
el 15 de Oct. de 2024
Comentada: the cyclist
el 17 de Oct. de 2024
Hello, I need some help in verifying the KSTEST method, which i implemented in the code. I have attached the data file and compared the theoretical CDF with ECDF using beta distribution. the KSTEST fails at 95% of significance while it passes at 99% (tight range). Can any one please check whether my method of implementing KS test is correct or wrong? and if my way interpretation is wrong then?
R = load('R.txt')
figure
h1 = histogram(R(1:end),20,'Normalization','cdf');
[f,x] = ecdf(R);
pd_12 = betacdf(x,a_mle,b_mle); % theoretical
[h2,p,ksstat] = kstest(R,'CDF', makedist('Beta','a',a_mle,'b',b_mle),'Alpha',0.01)
J = plot(x,pd_12,'b','Linewidth',2); grid on;
hold on
plot(x,f,'LineStyle', '-', 'Color', 'r','Linewidth',2)
legend('Histogram of data','Theoretical Beta CDF','ECDF of data','Location','best')
2 comentarios
the cyclist
el 15 de Oct. de 2024
Editada: the cyclist
el 15 de Oct. de 2024
We need a_mle and b_mle to test your code. Is it the coefficients from
betafit(R)
?
Respuesta aceptada
the cyclist
el 15 de Oct. de 2024
R = load('R.txt');
coeff = betafit(R);
a_mle = coeff(1);
b_mle = coeff(2);
[~,x] = ecdf(R);
pd_12 = betacdf(x,a_mle,b_mle); % theoretical
[h_05,p_05,ksstat_05] = kstest(R,'CDF', makedist('Beta','a',a_mle,'b',b_mle),'Alpha',0.05)
[h_01,p_01,ksstat_01] = kstest(R,'CDF', makedist('Beta','a',a_mle,'b',b_mle),'Alpha',0.01)
It is unclear to me what you mean by "pass" and "fail" the test, or by "tight range".
The P-value of the K-S test is equal to 0.0142. Therefore,
- if alpha is 0.05, the null hypothesis is rejected (h=1)
- if alpha is 0.01, the null hypothesis is not rejected (h=0)
So, I guess you were interpreting the output incorrectly?
7 comentarios
the cyclist
el 17 de Oct. de 2024
It's a strange way to think about it. If you exclude elements that would have been expected from random draws from those distributions, then it makes the null distributions less likely to be accepted.
That being said, if you want to limit R to only those values smaller than R_threshold, then
R_limited = R(R < R_threshold)
is that set of values.
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