Bayesian hierarchical mixture clustering (BHMC) improves on the traditional Bayesian hierarchical clustering by, with regard to the parent-to-child diffusion in the generative process, replacing the conventional Gaussian-to-Gaussian (G2G) kernels with a Hierarchical Dirichlet Process Mixture Model (HDPMM). However, the drawback of the BHMC lies in the possibility of obtaining trees with comparatively high nodal variance in the higher levels (i.e., those closer to the root node). This can be interpreted as that the separation between the nodes, particularly those in the higher levels, might be weak. We attempt to overcome this drawback through a recent inferential framework named posterior regularization, which facilitates a simple manner to...
Most clustering algorithms assume that all dimensions of the data can be described by a single struc...
In this research we consider problems involving discrete data which are divided into a set of hierar...
In recent years the Dirichlet process prior has experienced a great success in the context of Bayesi...
Description The method performs bottom-up hierarchical clustering, using a Dirichlet Process (infi-n...
© 2015 IEEE. We present a novel non-parametric clustering model using Gaussian mixture model (NHCM)....
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...
Bayesian hierarchical models are powerful tools for learning common latent features across multiple ...
One of the most important goals of unsupervised learning is to discover meaningful clusters in data....
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
Discovering hierarchical regularities in data is a key problem in interacting with large datasets, m...
Discovering hierarchical regularities in data is a key problem in interacting with large datasets, m...
Abstract There are many hierarchical clustering algorithms available, but theselack a firm statistic...
We propose the hierarchical Dirichlet process (HDP), a nonparametric Bayesian model for clustering ...
In recent years the Dirichlet process prior has experienced a great success in the context of Bayesi...
Most clustering algorithms assume that all dimensions of the data can be described by a single struc...
In this research we consider problems involving discrete data which are divided into a set of hierar...
In recent years the Dirichlet process prior has experienced a great success in the context of Bayesi...
Description The method performs bottom-up hierarchical clustering, using a Dirichlet Process (infi-n...
© 2015 IEEE. We present a novel non-parametric clustering model using Gaussian mixture model (NHCM)....
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...
Bayesian hierarchical models are powerful tools for learning common latent features across multiple ...
One of the most important goals of unsupervised learning is to discover meaningful clusters in data....
<p>Clustering methods are designed to separate heterogeneous data into groups of similar objects suc...
Discovering hierarchical regularities in data is a key problem in interacting with large datasets, m...
Discovering hierarchical regularities in data is a key problem in interacting with large datasets, m...
Abstract There are many hierarchical clustering algorithms available, but theselack a firm statistic...
We propose the hierarchical Dirichlet process (HDP), a nonparametric Bayesian model for clustering ...
In recent years the Dirichlet process prior has experienced a great success in the context of Bayesi...
Most clustering algorithms assume that all dimensions of the data can be described by a single struc...
In this research we consider problems involving discrete data which are divided into a set of hierar...
In recent years the Dirichlet process prior has experienced a great success in the context of Bayesi...