BanditPAM: Almost Linear Time k-Medoids Clustering via Multi-Armed Bandits Mo Tiwari
–Neural Information Processing Systems
Clustering is a ubiquitous task in data science. Compared to the commonly used k-means clustering, k-medoids clustering requires the cluster centers to be actual data points and supports arbitrary distance metrics, which permits greater interpretability and the clustering of structured objects. Current state-of-the-art k-medoids clustering algorithms, such as Partitioning Around Medoids (PAM), are iterative and are quadratic in the dataset size n for each iteration, being prohibitively expensive for large datasets.
Neural Information Processing Systems
May-29-2025, 18:16:59 GMT
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