Bayesian Hierarchical Clustering with Exponential Family: Small-Variance Asymptotics and Reducibility

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Bayesian hierarchical clustering (BHC) is an agglomerative clustering method, where a probabilistic model is defined and its marginal likelihoods are evaluated to decide which clusters to merge. While BHC provides a few advantages over traditional distance-based agglomerative clustering algorithms, successive evaluation of marginal likelihoods and careful hyperparameter tuning are cumbersome and limit the scalability. In this paper we relax BHC into a non-probabilistic formulation, exploring small-variance asymptotics in conjugate-exponential models. We develop a novel clustering algorithm, referred to as relaxed BHC (RBHC), from the asymptotic limit of the BHC model that exhibits the scalability of distance-based agglomerative clustering algorithms as well as the flexibility of Bayesian nonparametric models. We also investigate the reducibility of the dissimilarity measure emerged from the asymptotic limit of the BHC model, allowing us to use scalable algorithms such as the nearest neighbor chain algorithm. Numerical experiments on both synthetic and real-world datasets demonstrate the validity and high performance of our method.
Publisher
Artificial Intelligence and Statistics
Issue Date
2015-05-11
Language
English
Citation

18th International Conference on Artificial Intelligence and Statistics (AISTATS), pp.581 - 589

ISSN
1938-7288
URI
http://hdl.handle.net/10203/279981
Appears in Collection
RIMS Conference Papers
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