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 bayesian agglomerative clustering


Bayesian Agglomerative Clustering with Coalescents

Neural Information Processing Systems

We introduce a new Bayesian model for hierarchical clustering based on a prior over trees called Kingman's coalescent. We develop novel greedy and sequential Monte Carlo inferences which operate in a bottom-up agglomerative fashion. We show experimentally the superiority of our algorithms over the state-of-the-art, and demonstrate our approach in document clustering and phylolinguistics.


Bayesian Agglomerative Clustering with Coalescents

Teh, Yee Whye, Daumé, Hal III, Roy, Daniel

arXiv.org Machine Learning

We introduce a new Bayesian model for hierarchical clustering based on a prior over trees called Kingman's coalescent. We develop novel greedy and sequential Monte Carlo inferences which operate in a bottom-up agglomerative fashion. We show experimentally the superiority of our algorithms over others, and demonstrate our approach in document clustering and phylolinguistics.


Bayesian Agglomerative Clustering with Coalescents

Teh, Yee W., III, Hal Daume, Roy, Daniel M.

Neural Information Processing Systems

We introduce a new Bayesian model for hierarchical clustering based on a prior over trees called Kingman's coalescent. We develop novel greedy and sequential Monte Carlo inferences which operate in a bottom-up agglomerative fashion. We show experimentally the superiority of our algorithms over the state-of-the-art, and demonstrate our approach in document clustering and phylolinguistics.


Bayesian Agglomerative Clustering with Coalescents

Teh, Yee W., III, Hal Daume, Roy, Daniel M.

Neural Information Processing Systems

We introduce a new Bayesian model for hierarchical clustering based on a prior over trees called Kingman's coalescent. We develop novel greedy and sequential Monte Carlo inferences which operate in a bottom-up agglomerative fashion. We show experimentally the superiority of our algorithms over the state-of-the-art, and demonstrate our approach in document clustering and phylolinguistics.


Bayesian Agglomerative Clustering with Coalescents

Teh, Yee W., III, Hal Daume, Roy, Daniel M.

Neural Information Processing Systems

We introduce a new Bayesian model for hierarchical clustering based on a prior over trees called Kingman's coalescent. We develop novel greedy and sequential Monte Carlo inferences which operate in a bottom-up agglomerative fashion. We show experimentally the superiority of our algorithms over the state-of-the-art, and demonstrate our approach in document clustering and phylolinguistics.