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I am using k-means and Euclidian distance algorithm to cluster data (iris.csv). However, I cannot cluster all of them into the right groups, there are some data within the wrong group.

So, I just would like to know that is it possible to cluster all the data into the right groups 100% ?

Another question in my mind is what is the best criterion to choose k?

Thank you for your help.

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2 Answers 2

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Typically use of clustering algorithms is when you don't actually know what is the right group for the given set. Even if your algorithm does cluster all the data from a given training set correctly that still won't mean it will cluster any data correctly. Moreover you should try to avoid overfitting to example data as this usually decreases performance.

As for choosing k - there are several algorithms and the best one may vary depending on the problem you try to solve.

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K- means had a tendency to create equally sized, convex clusters. If your clusters are of very different sizes or have irregular shapes some other algorithm may have better performance. http://en.m.wikipedia.org/wiki/Cluster_analysis#Clustering_algorithms

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