BanditPAM++: Faster k-medoids Clustering

Neural Information Processing Systems 

Clustering is a fundamental task in data science with wide-ranging applications. In k-medoids clustering, cluster centers must be actual datapoints and arbitrary distance metrics may be used; these features allow for greater interpretability of the cluster centers and the clustering of exotic objects in k-medoids clustering, respectively.

Similar Docs  Excel Report  more

TitleSimilaritySource
None found