CRAN/E | JointNets

JointNets

End-to-End Sparse Gaussian Graphical Model Simulation, Estimation, Visualization, Evaluation and Application

Installation

About

An end-to-end package for learning multiple sparse Gaussian graphical models and nonparanormal models from Heterogeneous Data with Additional Knowledge. It is able to simulate multiple related graphs as well as produce samples drawn from them. Multiple state-of-the-art sparse Gaussian graphical model estimators are included to both multiple and difference estimation. Graph visualization is available in 2D as well as 3D, designed specifically for brain. Moreover, a set of evaluation metrics are integrated for easy exploration with model validity. Finally, classification using graphical model is achieved with Quadratic Discriminant Analysis. The package comes with multiple demos with datasets from various fields. Methods references: SIMULE (Wang B et al. (2017) doi:10.1007/s10994-017-5635-7), WSIMULE (Singh C et al. (2017) ), DIFFEE (Wang B et al. (2018) ), JEEK (Wang B et al. (2018) ), JGL(Danaher P et al. (2012) ) and kdiffnet (Sekhon A et al, preprint for publication).

github.com/QData/JointNets
Bug report File report

Key Metrics

Version 2.0.1
R ≥ 3.4.4
Published 2019-07-29 1739 days ago
Needs compilation? no
License GPL-2
CRAN checks JointNets results

Downloads

Yesterday 1 0%
Last 7 days 5 -38%
Last 30 days 29 -6%
Last 90 days 93 -40%
Last 365 days 452 -79%

Maintainer

Maintainer

Arshdeep Sekhon

as5cu@virginia.edu

Authors

Zhaoyang Wang

aut

Beilun Wang

aut

Arshdeep Sekhon

aut / cre

Yanjun Qi

aut

Material

Reference manual
Package source

macOS

r-release

arm64

r-oldrel

arm64

r-release

x86_64

r-oldrel

x86_64

Windows

r-devel

x86_64

r-release

x86_64

r-oldrel

x86_64

Old Sources

JointNets archive

Depends

R ≥ 3.4.4
lpSolve
pcaPP
igraph
parallel
JGL

Imports

MASS
brainR
misc3d
oro.nifti
shiny
rgl
methods