Determination of data points in each cluster of K-means algorithm
5 Ansichten (letzte 30 Tage)
Ältere Kommentare anzeigen
Learner
am 23 Mai 2021
Kommentiert: Learner
am 27 Mai 2021
Hello,
How can I calculate the number of data points of each cluster of K-means ? I found the answer of counter in python, but donot know how to use such kind of commond in MATLAB. I am finding clusters using this code
clear workspace;
path = char('E:\final'); %pass to this variable your complet data set path
net=alexnet();
imds = imageDatastore(fullfile(path),'IncludeSubfolders',true, 'LabelSource', 'foldernames');
augImds=augmentedImageDatastore(net.Layers(1, 1).InputSize(1:2),imds);
idx=randperm(numel(imds.Files),30);
imgEx=readByIndex(augImds,idx);
figure;montage(imgEx.input);title('example of the dataset');
figure;
Labels=imds.Labels;
% count the number of images
numClass=numel(countcats(Labels));
% feature extraction with the pre-trained network
feature=squeeze(activations(net,augImds,'fc8'));
% conduct a principal component analysis for the dimension reduction
A=pca(feature,"Centered",true);
subplot(1,2,1);
gscatter(A(:,1),A(:,2),Labels);
subplot(1,2,2);
% perform t-sne for the dimension reduction
T=tsne(feature');
gscatter(T(:,1),T(:,2),Labels);
% perform k-means algorithm
% please note that as the result is dependent on the initial point in the algorithm, the
% result would not be same
C=kmedoids(feature',numClass,"Start","plus");
% confirm the number of images in the largest group
[~,Frequency] = mode(C);
sz=net.Layers(1, 1).InputSize(1:2);
% prepare a matrix to show the clustering result
I=zeros(sz(1)*numClass,sz(2)*Frequency,3,'uint8');
% loop over the class to display images assigned to the group
for i=1:numClass
% read the images assigned to the group
% use the function "find" to find out the index of the i-th group image
ithGroup=readByIndex(augImds,find(C==i));
% tile the images extracted above
I((i-1)*sz(1)+1:i*sz(1),1:sz(2)*numel(find(C==i)),:)=cat(2,ithGroup.input{ : });
end
figure;
imshow(I);
title('result of the image clustering using k-means after feature extraction with alexnet')
3 Kommentare
Akzeptierte Antwort
Adam Danz
am 24 Mai 2021
Bearbeitet: Adam Danz
am 24 Mai 2021
C = kmedoids(___)
T = groupcounts(C)
4 Kommentare
Adam Danz
am 24 Mai 2021
> With this T = groupcounts(C) I got the count of datapoints that are in the cluster.
Doesn't that address your question, "How can I calculate the number of data points of each cluster of K-means" ?
It sounds like we've got an XY Problem. I'd have to look deeper into what you're doing and I don't have the time right now to do that. Hopefully ImageAnalyst's comment above can point you in the right direction.
Weitere Antworten (1)
Image Analyst
am 24 Mai 2021
classNumbers = kmedoids(X,k)
To find how many data points are in class 1 for example
numberInClass1 = sum(classNumbers == 1);
0 Kommentare
Siehe auch
Kategorien
Mehr zu Parallel and Cloud finden Sie in Help Center und File Exchange
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!