Using Matlabs K-means I am unsure on the specifics of the clustering. To explain this I will use an example:
My data has been normalized and the outputs look like this:
Each row represents a network packet after normalization. So row 1 would represent a packet from Computer A.
Now I am wondering when I run my K-means in Matlab does it cluster each column or does it cluster via row?
i.e Will Column A belong to Cluster 1 Column B Cluster 2 etc.
The reason behind asking is I need each packet (Row) to remain bound and each packet clustered based on its intrinsic qualities. My fear however is this may seriously nerf its capabilities. But I am hoping there is an aggregation method available that can solve this riddle.
%% generate sample data K = 4; numObservarations = 5000; dimensions = 42; %% cluster opts = statset('MaxIter', 500, 'Display', 'iter'); [clustIDX, clusters, interClustSum, Dist] = kmeans(data, K, 'options',opts, ... 'distance','sqEuclidean', 'EmptyAction','singleton', 'replicates',3); %% plot data+clusters figure, hold on scatter3(data(:,1),data(:,2),data(:,3), 5, clustIDX, 'filled') scatter3(clusters(:,1),clusters(:,2),clusters(:,3), 100, (1:K)', 'filled') hold off, xlabel('x'), ylabel('y'), zlabel('z') %% plot clusters quality figure [silh,h] = silhouette(data, clustIDX); avrgScore = mean(silh); %% Assign data to clusters % calculate distance (squared) of all instances to each cluster centroid D = zeros(numObservarations, K); % init distances for k=1:K %d = sum((x-y).^2).^0.5 D(:,k) = sum( ((data - repmat(clusters(k,:),numObservarations,1)).^2), 2); end % find for all instances the cluster closet to it [minDists, clusterIndices] = min(D, , 2); % compare it with what you expect it to be sum(clusterIndices == clustIDX)
This is based on 5000 rows. Unfortunately being unable to rebuild the data after clustering limits my knowledge on what is happening. (See related question: MATLAB - Classification output)