Is there a function to create the P-P plot in Matlab, to compare two cumulative distribution functions against each other?

8 visualizaciones (últimos 30 días)
Is there a function to create the P-P plot in Matlab, to compare two cumulative distribution functions against each other?
From Wikipedia: "In statistics, a P–P plot (probability–probability plot or percent–percent plot or P value plot) is a probability plot for assessing how closely two data sets agree, or for assessing how closely a dataset fits a particular model. It works by plotting the two cumulative distribution functions against each other; if they are similar, the data will appear to be nearly a straight line. This behavior is similar to that of the more widely used Q–Q plot, with which it is often confused."
  3 comentarios
Sim
Sim el 6 de Sept. de 2024
Editada: Sim el 6 de Sept. de 2024
Hi @Torsten :-)
Well, just empirical data like, for example, these ones:
rng default; % for reproducibility
a = 0;
b = 100;
nb = 50;
% Create two log-normal distributed random datasets, "x" and "y'
% (but we can use any randomly distributed data)
x = (b-a).*round(lognrnd(1,1,1000,1)) + a;
y = (b-a).*round(lognrnd(0.88,1.1,1000,1)) + a;
% histograms of "x" and "y"
hx = histogram(x,'NumBins',nb);
hy = histogram(y,'NumBins',nb);
Sim
Sim el 6 de Sept. de 2024
Maybe the following code can make the p-p plot... but since the two resulting ecfd have different sizes, I do not know how to deal with it... I mean, in the following example, I compared F with a shorter G, but this is not correct...
rng default; % for reproducibility
a = 0;
b = 100;
nb = 50;
% Create two log-normal distributed random datasets, "x" and "y'
% (but we can use any randomly distributed data)
x = (b-a).*round(lognrnd(1,1,1000,1)) + a;
y = (b-a).*round(lognrnd(0.88,1.1,1000,1)) + a;
[F,~] = ecdf(x);
[G,~] = ecdf(y);
figure
hold on
plot(F,G(1:size(F,1)),'o','MarkerSize',10,'MarkerFaceColor','b')
plot(0:1,0:1,'-','color','k')

Iniciar sesión para comentar.

Respuesta aceptada

Torsten
Torsten el 6 de Sept. de 2024
Movida: Torsten el 6 de Sept. de 2024
rng default; % for reproducibility
a = 0;
b = 100;
nb = 50;
% Create two log-normal distributed random datasets, "x" and "y'
% (but we can use any randomly distributed data)
x = (b-a).*round(lognrnd(1,1,1000,1)) + a;
y = (b-a).*round(lognrnd(0.88,1.1,1000,1)) + a;
[F,t1] = ecdf(x);
[t1,ia] = unique(t1,'Stable');
F = F(ia);
[G,t2] = ecdf(y);
[t2,ia] = unique(t2,'Stable');
G = G(ia);
teval = unique(sort([t1;t2]));
Feval = interp1(t1,F,teval);
Geval = interp1(t2,G,teval);
hold on
plot(Feval,Geval,'o')
plot(0:1,0:1,'-','color','k')
hold off
grid on
  3 comentarios
Torsten
Torsten el 6 de Sept. de 2024
Editada: Torsten el 6 de Sept. de 2024
% Modified Rahul solution
% inputs
rng default;
a = 0;
b = 100;
nb = 50;
x = (b-a).*round(lognrnd(1,1,1000,1)) + a;
y = (b-a).*round(lognrnd(0.88,1.1,1000,1)) + a;
[f1, x1] = ecdf(x);
[f2, x2] = ecdf(y);
[x1_unique, ia1, ~] = unique(x1);
f1_unique = f1(ia1);
[x2_unique, ia2, ~] = unique(x2);
f2_unique = f2(ia2);
f1_interp = interp1(x1_unique, f1_unique, union(x1_unique,x2_unique));
f2_interp = interp1(x2_unique, f2_unique, union(x1_unique,x2_unique));
hold on
plot(f1_interp, f2_interp, 'o');
plot(0:1,0:1,'-','color','k')
hold off
grid on

Iniciar sesión para comentar.

Más respuestas (1)

Rahul
Rahul el 6 de Sept. de 2024
Editada: Rahul el 7 de Sept. de 2024
Hi Sim,
I understand that you’re trying to generate aPP (Probability-Probability) plot of two datasets, where a pp plot is made by plotting the fraction failing (CDF) of one distribution vs the fraction failing (CDF) of another distribution.
To generate this plot we simply plot the CDF of one distribution vs the CDF of another distribution. If the distributions are very similar, the points will lie on the 45 degree diagonal. Any deviation from this diagonal indicates that one distribution is leading or lagging the other.
Below is the reference code for your understanding:
1. Define Your Data
Assuming two datasets of unirform random distribution, data1 and data2, which you want to compare using a P–P plot.
data1 = randn(100, 1); % Example data set 1
data2 = randn(100, 1); % Example data set 2
2. Compute the Cumulative Distribution Functions (CDFs)
You need to calculate the empirical CDFs of both datasets, for which you can use the ecdf function, and futher interpolate the CDF values to match the percentiles of the other dataset.
% Compute CDFs for data1
[f1, x1] = ecdf(data1);
% Compute CDFs for data2
[f2, x2] = ecdf(data2);
% Ensure x1 and x2 are unique and sorted
[x1_unique, ia1, ~] = unique(x1);
f1_unique = f1(ia1);
[x2_unique, ia2, ~] = unique(x2);
f2_unique = f2(ia2);
% Interpolate CDFs
f1_interp = interp1(x1_unique, f1_unique, x2_unique, 'linear', 'extrap');
f2_interp = interp1(x2_unique, f2_unique, x1_unique, 'linear', 'extrap');
3. Create the P–P Plot
After aligning CDF values from both datasets, you can plot them against each other.
figure;
plot(f1_interp, f2_interp, 'o');
xlabel('CDF of data1');
ylabel('CDF of data2');
title('P–P Plot');
hold on;
xline = [min(f1_interp), max(f1_interp)];
yline = xline;
% Plot the 45-degree line
plot(xline, yline, 'r--', 'LineWidth', 2);
axis equal;
grid on;
  • Normalization: Make sure your datasets are appropriately scaled or normalized if they are not in the same range.
  • Handling NaNs or Infinities: Ensure your data does not contain NaNs or infinities, which can affect interpolation and plotting.
For more information regarding usage of ‘cdf’ function, refer to the documentation link mentioned below:
https://www.mathworks.com/help/stats/prob.normaldistribution.cdf.html
  3 comentarios
Rahul
Rahul el 6 de Sept. de 2024
Editada: Rahul el 6 de Sept. de 2024
Hi @Sim,
Sorry for that, I missed out on that part, take a look now I've edited my answer to include f1_interp and f2_interp in 2nd section.
Sim
Sim el 6 de Sept. de 2024
Thanks @Rahul :-) However, your solution still does not work for my initial example :-(

Iniciar sesión para comentar.

Categorías

Más información sobre Surface and Mesh Plots en Help Center y File Exchange.

Community Treasure Hunt

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

Start Hunting!

Translated by