Version: 2019.6
Date: 2019-06-13
Title: Software Tools for the Statistical Analysis of Network Data
Depends: R (≥ 3.5), tergm (≥ 3.6.1), ergm.count (≥ 3.3), sna (≥ 2.4), tsna (≥ 0.3)
Imports: ergm (≥ 3.10.4), network (≥ 1.15), networkDynamic (≥ 0.10.0), statnet.common (≥ 4.2)
Suggests: ergm.rank (≥ 1.2.0), ergm.ego (≥ 0.5), EpiModel (≥ 1.7.2), degreenet (≥ 1.3-3), latentnet (≥ 2.9.0), networksis (≥ 2.1-3), relevent (≥ 1.0-4), ndtv (≥ 0.13.0)
BugReports: https://github.com/statnet/statnet/issues
Description: Statnet is a collection of packages for statistical network analysis that are designed to work together because they share common data representations and 'API' design. They provide an integrated set of tools for the representation, visualization, analysis, and simulation of many different forms of network data. This package is designed to make it easy to install and load the key 'statnet' packages in a single step. Learn more about 'statnet' at http://www.statnet.org. Tutorials for many packages can be found at https://github.com/statnet/Workshops/wiki. For an introduction to functions in this package, type help(package='statnet').
License: GPL-3 + file LICENSE
URL: http://statnet.org
NeedsCompilation: no
Packaged: 2019-06-13 14:15:22 UTC; morrism
Author: Mark S. Handcock [aut], David R. Hunter [aut], Carter T. Butts [aut], Steven M. Goodreau [aut], Pavel N. Krivitsky ORCID iD [aut], Skye Bender-deMoll [aut], Martina Morris [aut, cre]
Maintainer: Martina Morris <morrism@uw.edu>
Repository: CRAN
Date/Publication: 2019-06-14 08:00:06 UTC

Easily Install and Load the statnet Packages for Statistical Network Analysis

Description

statnet is a collection of software packages for statistical network analysis that are designed to work together, with a common data structure and API, to provide seamless access to a broad range of network analytic and graphical methodology. This package is designed to make it easy to install and load multiple statnet packages in a single step.

statnet software implements recent advances in network modeling based on exponential-family random graph models (ERGM), as well as latent space models and more traditional descriptive network methods. This provides a comprehensive framework for cross-sectional and dynamic network analysis: tools for description, network visualization model estimation, model evaluation, model-based network simulation. The statistical estimation and simulation functions are based on a central Markov chain Monte Carlo (MCMC) algorithm that has been optimized for speed and robustness.

The code is actively developed and maintained by the statnet development team. New functionality is being added over time.

Details

statnet packages are written in a combination of R and C It is usually used interactively from within the R graphical user interface via a command line. it can also be used in non-interactive (or “batch”) mode to allow longer or multiple tasks to be processed without user interaction. The suite of packages are available on the Comprehensive R Archive Network (CRAN) at https://www.r-project.org/ and also on the statnet project website at http://www.statnet.org/

The suite of packages has the following components (those automatically downloaded with the statnet package are noted):

For data handling:

For analyzing cross-sectional networks:

For temporal (dynamic) network analysis:

Additional utilities:

statnet is a metapackage; its only purpose is to provide a convenient way for a user to load the main packages in the statnet suite. Those can, of course, also be installed individually.

Each package in statnet has associated help files and internal documentation, and additional the information can be found on the statnet project website (http://www.statnet.org/). Tutorials, instructions on how to join the statnet help mailing list, references and links to further resources are provided there. For the reference paper(s) that provide information on the theory and methodology behind each specific package use the citation("packagename") function in R after loading statnet.

We have invested much time and effort in creating the statnet suite of packages and supporting material so that others can use and build on these tools. We ask in return that you cite it when you use it. For publication of results obtained from statnet, the original authors are to be cited as described in citation("statnet"). If you are only using specific package(s) from the suite, please cite the specific package(s) as described in the appropriate citation("packgename"). Thank you!

Author(s)

Mark S. Handcock handcock@stat.ucla.edu,
David R. Hunter dhunter@stat.psu.edu,
Carter T. Butts buttsc@uci.edu,
Steven M. Goodreau goodreau@uw.edu,
Pavel N. Krivitsky pavel@uow.edu.au,
Skye Bender-deMoll skyebend@skyeome.net,
Samuel Jenness (for EpiModel) samuel.m.jenness@emory.edu, and
Martina Morris morrism@uw.edu

Maintainer: Martina Morris morris@uw.edu


Update the Component Packages of the Statnet Suite

Description

A wrapper around update.packages to update the component packages of Statnet Suite to their latest versions.

Usage

update_statnet(..., ask = FALSE, checkBuilt = TRUE, addURLs = character())

Arguments

ask, checkBuilt

Arguments to update.packages documentation. The defaults are different from those of that function.

addURLs

Optional repository URLs in addition to CRAN, such as http://statnet.csde.washington.edu/preview. Defaults to none.

...

Additional arguments to be passed to update.packages.

Details

Updates the list component packages of Statnet Suite, using setRepositories and update.packages.

Since there are no good ways to update packages once they are loaded, this function should be called immediately after restarting R.

Value

update_statnet returns NULL invisibly.

See Also

setRepositories, update.packages, install.packages

Examples

## Not run: 
# Update from CRAN
statnet::update_statnet()

# Update from statnet.org's preview release, taking packages from CRAN
# as needed
statnet::update_statnet(addURLs="http://statnet.csde.washington.edu/preview")

## End(Not run)