The detection and determination of clusters has been of special interest among researchers from different fields for a long time. In particular, assessing whether the clusters are significant is a question that has been asked by a number of experimenters. In Fuentes and Casella (2009), the authors put forth a new methodology for analyzing clusters. It tests the hypothesis H0 : κ = 1 versus H1 : κ = k in a Bayesian setting, where κ denotes the number of clusters in a population. The bayesclust package implements this approach in R. Here we give an overview of the algorithm and a detailed description of the functions available in the package. The routines in bayesclust allow the user to test for the existence of clusters, and then pick out op...
This paper is a supplement paper to Knorr-Held and Rasser (1999), Discussion Paper 107. "Bayesian De...
Researchers often have informative hypotheses in mind when comparing means across treatment groups, ...
One of the greatest challenge is electing appropriate hyperparameters for unsupervised clustering al...
This is the publisher’s final pdf. The published article is copyrighted by American Statistical Asso...
Detecting and determining clusters present in a certain sample has been an important concern, among ...
Detecting and determining clusters present in a certain sample has been an important concern, among ...
The R package bclust is useful for clustering high-dimensional continuous data. The package uses a p...
The detection of areas in which the risk of a particular disease is significantly elevated, leading ...
Cluster detection is an important public health endeavor and in this paper we describe and apply a r...
One of the most important goals of unsupervised learning is to discover meaningful clusters in data....
We propose a novel framework based on Bayesian principles for validating clusterings and present eff...
Clustering is the partitioning of a set of objects into groups (clusters) so that objects within a g...
Because of the huge number of partitions of even a moderately sized dataset, even when Bayes factors...
This thesis is concerned with the study of a Bayesian clustering algorithm, proposed by Heard et al....
Determining the optimal number of clusters appears to be a persistent and controver-sial issue in cl...
This paper is a supplement paper to Knorr-Held and Rasser (1999), Discussion Paper 107. "Bayesian De...
Researchers often have informative hypotheses in mind when comparing means across treatment groups, ...
One of the greatest challenge is electing appropriate hyperparameters for unsupervised clustering al...
This is the publisher’s final pdf. The published article is copyrighted by American Statistical Asso...
Detecting and determining clusters present in a certain sample has been an important concern, among ...
Detecting and determining clusters present in a certain sample has been an important concern, among ...
The R package bclust is useful for clustering high-dimensional continuous data. The package uses a p...
The detection of areas in which the risk of a particular disease is significantly elevated, leading ...
Cluster detection is an important public health endeavor and in this paper we describe and apply a r...
One of the most important goals of unsupervised learning is to discover meaningful clusters in data....
We propose a novel framework based on Bayesian principles for validating clusterings and present eff...
Clustering is the partitioning of a set of objects into groups (clusters) so that objects within a g...
Because of the huge number of partitions of even a moderately sized dataset, even when Bayes factors...
This thesis is concerned with the study of a Bayesian clustering algorithm, proposed by Heard et al....
Determining the optimal number of clusters appears to be a persistent and controver-sial issue in cl...
This paper is a supplement paper to Knorr-Held and Rasser (1999), Discussion Paper 107. "Bayesian De...
Researchers often have informative hypotheses in mind when comparing means across treatment groups, ...
One of the greatest challenge is electing appropriate hyperparameters for unsupervised clustering al...