Clustering with Bregman Divergences: an Asymptotic Analysis
–Neural Information Processing Systems
Clustering, in particular k-means clustering, is a central topic in data analysis. Clustering with Bregman divergences is a recently proposed generalization of k-means clustering which has already been widely used in applications. In this paper we analyze theoretical properties of Bregman clustering when the number of the clusters k is large. We establish quantization rates and describe the limiting distribution of the centers as k, extending well-known results for k-means clustering.
Neural Information Processing Systems
Mar-12-2024, 17:14:54 GMT