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MvBinary (version 1.1)

Modelling Multivariate Binary Data with Blocks of Specific One-Factor Distribution

Description

Modelling Multivariate Binary Data with Blocks of Specific One-Factor Distribution. Variables are grouped into independent blocks. Each variable is described by two continuous parameters (its marginal probability and its dependency strength with the other block variables), and one binary parameter (positive or negative dependency). Model selection consists in the estimation of the repartition of the variables into blocks. It is carried out by the maximization of the BIC criterion by a deterministic (faster) algorithm or by a stochastic (more time consuming but optimal) algorithm. Tool functions facilitate the model interpretation.

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Version

Install

install.packages('MvBinary')

Monthly Downloads

115

Version

1.1

License

GPL (>= 2)

Maintainer

Last Published

December 15th, 2016

Functions in MvBinary (1.1)

plants

Real binary data: Plants
MvBinaryResult-class

Constructor of [MvBinaryResult] class
MvBinaryProbaPost

Computation of the model Cramer'v.
ComputeMvBinaryCramer

Computation of the model Cramer'v.
print

Summary function.
summary

Summary function.
MvBinaryEstim

Create an instance of the [MvBinaryResult] class
MvBinary-package

MvBinary a package for Multivariate Binary data
ComputeEmpiricCramer

Computation of the Empiric Cramer'v.
MvBinaryExample

Simulated binary data: MvBinaryExample