Many data are naturally modeled by an unobserved hierarchical structure. In this paper we propose a flexible nonparametric prior over unknown data hierarchies. The approach uses nested stick-breaking processes to allow for trees of unbounded width and depth, where data can live at any node and are infinitely exchangeable. One can view our model as providing infinite mixtures where the components have a dependency structure corresponding to an evolutionary diffusion down a tree. By using a stick-breaking approach, we can apply Markov chain Monte Carlo methods based on slice sampling to perform Bayesian inference and simulate from the posterior distribution on trees. We apply our method to hierarchical clustering of images and topic modeling ...
We propose a class of kernel stick-breaking processes for uncountable collections of dependent rando...
We define the beta diffusion tree, a random tree structure with a set of leaves that defines a colle...
Discovering hierarchical regularities in data is a key problem in interacting with large datasets, m...
In this paper we introduce the Pitman Yor Diffusion Tree (PYDT), a Bayesian non-parametric prior ove...
Bayesian nonparametric density estimation is dominated by single-scale methods, typically exploiting...
Hierarchical clustering methods offer an intuitive and powerful way to model a wide variety of data ...
We define the beta diffusion tree, a random tree structure with a set of leaves that defines a colle...
We develop a new class of hierarchical stochastic models called spatial random trees (SRTs) which ad...
Multilevel models are extremely useful in handling large hierarchical datasets. However, computation...
Hierarchical beta process has found interesting applications in recent years. In this paper we prese...
We present a nonparametric Bayesian method of estimating variable order Markov processes up to a the...
We introduce the Pitman Yor Diffusion Tree (PYDT) for hierarchical clustering, a generalization of t...
We develop a new class of hierarchical stochastic image models called spatial random trees (SRTs) wh...
Abstract—In this paper we introduce the Pitman Yor Diffusion Tree (PYDT), a Bayesian non-parametric ...
We present a nonparametric Bayesian model of tree structures based on the hierarchical Dirichlet pro...
We propose a class of kernel stick-breaking processes for uncountable collections of dependent rando...
We define the beta diffusion tree, a random tree structure with a set of leaves that defines a colle...
Discovering hierarchical regularities in data is a key problem in interacting with large datasets, m...
In this paper we introduce the Pitman Yor Diffusion Tree (PYDT), a Bayesian non-parametric prior ove...
Bayesian nonparametric density estimation is dominated by single-scale methods, typically exploiting...
Hierarchical clustering methods offer an intuitive and powerful way to model a wide variety of data ...
We define the beta diffusion tree, a random tree structure with a set of leaves that defines a colle...
We develop a new class of hierarchical stochastic models called spatial random trees (SRTs) which ad...
Multilevel models are extremely useful in handling large hierarchical datasets. However, computation...
Hierarchical beta process has found interesting applications in recent years. In this paper we prese...
We present a nonparametric Bayesian method of estimating variable order Markov processes up to a the...
We introduce the Pitman Yor Diffusion Tree (PYDT) for hierarchical clustering, a generalization of t...
We develop a new class of hierarchical stochastic image models called spatial random trees (SRTs) wh...
Abstract—In this paper we introduce the Pitman Yor Diffusion Tree (PYDT), a Bayesian non-parametric ...
We present a nonparametric Bayesian model of tree structures based on the hierarchical Dirichlet pro...
We propose a class of kernel stick-breaking processes for uncountable collections of dependent rando...
We define the beta diffusion tree, a random tree structure with a set of leaves that defines a colle...
Discovering hierarchical regularities in data is a key problem in interacting with large datasets, m...