MATLAB GMM by fitgmdist gives different values even after initializing using kmeans

8 Ansichten (letzte 30 Tage)
So I am trying to compare two Gaussian Mixture Models with two distributions every time I run the program i get different values even after initializing using k-means. Am I missing something??
X = mat_cell;
[counts,binLocations] = imhist(X);
stem(binLocations, counts, 'MarkerSize', 1 );
xlim([-1 1]);
% inital kmeans step used to initialize EM
K = 2; % number of mixtures/clusters
cInd = kmeans(X(:), K,'MaxIter', 75536);
% fit a GMM model
options = statset('MaxIter', 75536);
gmm = fitgmdist(X(:),K,'Start',cInd,'CovarianceType','diagonal','Regularize',1e-5,'Options',options);
  5 Kommentare
SAFAA ALQAYSI
SAFAA ALQAYSI am 13 Sep. 2017
Adem would you please let me know the way you did with GMM and the hierarchical clustering ????
Thanks
Catherine Davey
Catherine Davey am 7 Mai 2023
K-means is not deterministic. Given that K-means will give a different result each time it is run, you cannot use it to ensure identical runs for the GMM algorithm.

Melden Sie sich an, um zu kommentieren.

Antworten (1)

the cyclist
the cyclist am 23 Jun. 2017
Set the seed for the pseudorandom number generation in your code. For example, put the line
rng 'default'
as the first line.
This will give you a pseudorandom sequence, but it will be reproducible.

Community Treasure Hunt

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

Start Hunting!

Translated by