About Anaconda Help Download Anaconda
If you were automatically logged out you may need to refresh the page. You're trying to access a page that requires authentication. ×

The input argument k which is the number of clusters is needed to start all of the partitioning clustering algorithms. In unsupervised learning applications, an optimal value of this argument is widely determined by using the internal validity indexes. Since these indexes suggest a k value which is computed on the clustering results after several runs of a clustering algorithm they are computationally expensive. On the contrary, 'kpeaks' enables to estimate k before running any clustering algorithm. It is based on a simple novel technique using the descriptive statistics of peak counts of the features in a data set.


© 2025 Anaconda, Inc. All Rights Reserved. (v4.2.2) Legal | Privacy Policy