<p>I consider the problem of clustering multiple related groups of data. My approach entails mixture models in the context of hierarchical Dirichlet processes, focusing on their ability to perform inference on the unknown number of components in the mixture, as well as to facilitate the sharing of information and borrowing of strength across the various data groups. Here, I build upon the hierarchical Dirichlet process model proposed by Muller <italics>et al.</italics> (2004), revising some relevant aspects of the model, as well as improving the MCMC sampler's convergence by combining local Gibbs sampler moves with global Metropolis-Hastings split-merge moves. I demonstrate the strengths of my model by employing it to cluster both synthe...
© 2015 IEEE. We present a novel non-parametric clustering model using Gaussian mixture model (NHCM)....
Abstract—In Dirichlet process (DP) mixture models, the number of components is implicitly determined...
Most clustering algorithms assume that all dimensions of the data can be described by a single struc...
We propose the hierarchical Dirichlet process (HDP), a nonparametric Bayesian model for clustering ...
This article focuses on the clustering problem based on Dirichlet process (DP) mixtures. To model bo...
This article focuses on the clustering problem based on Dirichlet process (DP) mixtures. To model bo...
This article focuses on the clustering problem based on Dirichlet process (DP) mixtures. To model bo...
We consider an infinite mixture model of Gaussian pro-cesses that share mixture components between n...
Data sets involving multiple groups with shared characteristics frequently arise in practice. In thi...
We propose a hierarchical infinite mixture model approach to address two issues in connectivity-base...
Abstract—We propose the supervised hierarchical Dirichlet process (sHDP), a nonparametric generative...
We present a novel algorithm for agglomerative hierarchical clustering based on evaluating marginal ...
In the Bayesian nonparametric family, Dirichlet Process (DP) is a prior distribution that is able to...
none3siAssessing homogeneity of distributions is an old problem that has received considerable atten...
The Dirichlet process mixture (DPM) model, a typical Bayesian nonparametric model, can infer the num...
© 2015 IEEE. We present a novel non-parametric clustering model using Gaussian mixture model (NHCM)....
Abstract—In Dirichlet process (DP) mixture models, the number of components is implicitly determined...
Most clustering algorithms assume that all dimensions of the data can be described by a single struc...
We propose the hierarchical Dirichlet process (HDP), a nonparametric Bayesian model for clustering ...
This article focuses on the clustering problem based on Dirichlet process (DP) mixtures. To model bo...
This article focuses on the clustering problem based on Dirichlet process (DP) mixtures. To model bo...
This article focuses on the clustering problem based on Dirichlet process (DP) mixtures. To model bo...
We consider an infinite mixture model of Gaussian pro-cesses that share mixture components between n...
Data sets involving multiple groups with shared characteristics frequently arise in practice. In thi...
We propose a hierarchical infinite mixture model approach to address two issues in connectivity-base...
Abstract—We propose the supervised hierarchical Dirichlet process (sHDP), a nonparametric generative...
We present a novel algorithm for agglomerative hierarchical clustering based on evaluating marginal ...
In the Bayesian nonparametric family, Dirichlet Process (DP) is a prior distribution that is able to...
none3siAssessing homogeneity of distributions is an old problem that has received considerable atten...
The Dirichlet process mixture (DPM) model, a typical Bayesian nonparametric model, can infer the num...
© 2015 IEEE. We present a novel non-parametric clustering model using Gaussian mixture model (NHCM)....
Abstract—In Dirichlet process (DP) mixture models, the number of components is implicitly determined...
Most clustering algorithms assume that all dimensions of the data can be described by a single struc...