Convex Clustering with Exemplar-Based Models
–Neural Information Processing Systems
Clustering is often formulated as the maximum likelihood estimation of a mixture model that explains the data. The EM algorithm widely used to solve the resulting optimization problem is inherently a gradient-descent method and is sensitive to initialization. The resulting solution is a local optimum in the neighborhood of the initial guess. This sensitivity to initialization presents a significant challenge in clustering large data sets into many clusters. In this paper, we present a dif- ferent approach to approximate mixture fitting for clustering.
Neural Information Processing Systems
Apr-6-2023, 14:38:12 GMT