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bclust (version 1.5)

Bayesian Hierarchical Clustering Using Spike and Slab Models

Description

Builds a dendrogram using log posterior as a natural distance defined by the model and meanwhile waits the clustering variables. It is also capable to computing equivalent Bayesian discrimination probabilities. The adopted method suites small sample large dimension setting. The model parameter estimation maybe difficult, depending on data structure and the chosen distribution family.

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Version

Install

install.packages('bclust')

Monthly Downloads

59

Version

1.5

License

GPL (>= 2)

Maintainer

Last Published

September 14th, 2015

Functions in bclust (1.5)

viplot

variable importance plot
bclustvs

bclustvs (Bayesian CLUSTering with Variable Selection) is a class
loglikelihood

computes the model log likelihood useful for estimation of the transformed.par
ditplot

dendrogram-image-teeth plot
teethplot

produces teeth plot useful for demonstating a grouping on clustered subjects
bdiscrim

discrimination using a Bayesian linear model
profileplot

a plot useful to visualise replicated data
imp

calculates variable and variable-cluster importances
gaelle

Messerli et. al. metabolomic data
meancss

computes statistics necessary for the evaluation of the log likelihood
bclust

Bayesian agglomerative clustering for high dimensional data with variable selection.
dptplot

dendrogram-profile-teeth plot