shinySbm is a R package containing a shiny application.
This application provides a user-friendly interface for network analysis
based on the sbm package made by Chiquet J, Donnet S and
Barbillon P (2023) CRAN. The
sbm package regroups into a unique framework tools for
estimating and manipulating variants of the stochastic block model.
shinySbm allows you to easily apply and explore the outputs
of a Stochastic Block Model without programming. It is useful if you
want to analyze your network data (adjacency matrix or list of edges)
without knowing the R language or to learn the basics of
the sbm package.
Stochastic block models (SBMs) are probabilistic models in statistical analysis of graphs or networks, that can be used to discover or understand the (hidden/latent) structure of a network, as well as for clustering purposes.
Stochastic Block Models are applied on network to simplify the information they gather, and help visualize the main behaviours/categories/relationships present in your network. It’s a latent model which identify significant blocks (groups) of nodes with similar connectivity patterns. This could help you to know if your network: hides closed sub-communities, is hierarchical, or has another specific structure.
With shinySbm you should also be able to:
I you want to use shinySBM without having to code a single line, the app is available on Migale.
RYou can install the development version of shinySbm like so:
install.packages("shinySbm")
The shinySbm package should be installed.
From a new R session run
shinySbm::shinySbmApp()
dockerIf you are familiar to docker, you can also download the
docker image by running the command:
docker pull registry.forgemia.inra.fr/theodore.vanrenterghem/shinysbm:latest
Once installed you can run the command to launch the app:
docker run -p 3838:3838 registry.forgemia.inra.fr/theodore.vanrenterghem/shinysbm:latest
And then from your browser find the address
http://localhost:3838/
Any questions, problems or comments regarding this application
?
Contact us: shiny.sbm.dev@gmail.com
Chiquet J, Donnet S, Barbillon P (2023). sbm: Stochastic Blockmodels.
R package version 0.4.5,
https://CRAN.R-project.org/package=sbm.