Assigned clusters to new data

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Aravin
Aravin on 1 Jun 2018
Commented: Abdullah on 13 Feb 2022
Hello experts,
Lets assume I have done kmean clustering using
[a C] = kmeans(X,1000);
Now I want to assigned new data lets newX clusters IDs. What built-in method I should use ?
  3 Comments
Aravin
Aravin on 1 Jun 2018
I have centroids (C) and now I want to map newX to centroids/clusters.
Abdullah
Abdullah on 13 Feb 2022
Xtest is your new data
and, C is the cluster centroid locations
Use euclidean distance to find the nearest clusters
[~,idx_test] = pdist2(C,Xtest,'euclidean','Smallest',1);

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Answers (2)

Aditya Adhikary
Aditya Adhikary on 1 Jun 2018
Edited: Aditya Adhikary on 1 Jun 2018
K-means clustering as such is an unsupervised method. From what I gather, you would like to learn the cluster centroids using the kmeans algorithm and then use these centroids to map new test data to the centroids in some manner. You could do the following :-
1. Assign each new data point to its closest centroid, by using a distance measure like sum-of-squares(same as Euclidean distance), or cosine similarity. For these, you can simply use the formulae, or use built in methods such as norm (also refer: How to calculate Euclidean distance ) or pdist.
Another (perhaps better) way, instead of reusing the centroids :-
2. Label all the samples in your training set according to the cluster they were assigned to (ex. you can choose a cluster and label all the points inside it as belonging to class 1), and then train a classifier (could be any algorithm, such as SVM) on this training data. Afterwards, classify your test samples using this model.
Hope this helps!

KSSV
KSSV on 1 Jun 2018
Read about knnsearch. This gives you the nearest neighbors of the given point. If your neighbors falls in certain Id..the given point also falls in the same ID.

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