Clustering process using SVM, unsupervised learning

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Mudasser Seraj
Mudasser Seraj el 12 de Jun. de 2018
Comentada: Mudasser Seraj el 14 de Jun. de 2018
Hello,
I am new in MATLAB. I have a large dataset (2+ millon points) containing 3 variables which I want to cluster/ classify into 3 groups based on the variation of those 3 variables. I have used K-means clustering method to cluster them. However, I was wondering is it possible to classify them using SVM? If yes, how should I move forward? Any suggestions will be appreciated. [Attched Sample Database matrix]
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Image Analyst
Image Analyst el 14 de Jun. de 2018
Do you have any training or ground truth data? Do the classes correspond to the values you'd give to normal, aggressive, defensive behavior? Surely you must have some data where you've identified the behavior of the measurement set. If you don't, then how will you ever know if what it comes up with is correct?
Have you tried classification learner to find out which method is best?
Mudasser Seraj
Mudasser Seraj el 14 de Jun. de 2018
No. I don't have any ground truth data. I need to apply some unsupervised learning method to classify them. I was thinking of using multiclass SVM as an unsupervised learning method to classify the sample data. Is it possible?

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