Dependent nonparametric trees for dynamic hierarchical clustering
Dubey, Kumar Avinava, Ho, Qirong, Williamson, Sinead A., Xing, Eric P.
–Neural Information Processing Systems
Hierarchical clustering methods offer an intuitive and powerful way to model a wide variety of data sets. However, the assumption of a fixed hierarchy is often overly restrictive when working with data generated over a period of time: We expect both the structure of our hierarchy, and the parameters of the clusters, to evolve with time. In this paper, we present a distribution over collections of time-dependent, infinite-dimensional trees that can be used to model evolving hierarchies, and present an efficient and scalable algorithm for performing approximate inference in such a model. We demonstrate the efficacy of our model and inference algorithm on both synthetic data and real-world document corpora.
Neural Information Processing Systems
Dec-31-2014