Convolution of two probability density function

9 views (last 30 days)
Hello:
I am interested to add two independent random variables, X1 and X2, described by kernel density functions. Is there any way to find out the joint PDF using convolution process in MATLAB?

Answers (1)

Jeff Miller
Jeff Miller on 24 Sep 2019
I don't know whether you can do this directly in MATLAB. If not, you can do it using the Cupid toolbox. Here is an example:
% Generate some data to use for an example:
data1 = randn(200,1);
data2 = 20*rand(300,1);
% Make the corresponding MATLAB kernel distribution objects:
kern1 = fitdist(data1,'Kernel');
kern2 = fitdist(data2,'Kernel');
% Derive Cupid distribution objects from MATLAB ones:
ckern1 = dMATLABc(kern1);
ckern2 = dMATLABc(kern2);
% Make a Convolution distribution from the Cupid distribution objects:
convkern = Convolution(ckern1,ckern2);
% Compute various properties of the convolution distribution:
a = convkern.Median
b = convkern.Mean
c = convkern.Variance
d = convkern.PDF(12)
e = convkern.CDF(13)
convkern.PlotDens; % Plot PDF and CDF
% et cetera

Categories

Find more on Contour Plots in Help Center and File Exchange

Community Treasure Hunt

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

Start Hunting!