statnet / lolog

Latent Order Logistic (LOLOG) Graph Models
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Latent Order Logistic (LOLOG) Graph Models

LOLOG is a general framework for generative statistical modeling of graph datasets motivated by the principle of network growth. This class of models is fully general and terms modeling different important network features can be mixed and matched to provide a rich generative description of complex networks.

Resources

Installation

The Easy Way

To install the latest release from CRAN run:

install.packages("lolog")

The Slightly Less Easy Way

To install the latest development version from the github repo run:

# If devtools is not installed:
# install.packages("devtools")

devtools::install_github("statnet/lolog")

If this is your first R source package that you have installed, you’ll also need a set of development tools. On Windows, download and install Rtools, and devtools takes care of the rest. On a Mac, install the Xcode command line tools. On Linux, install the R development package, usually called r-devel or r-base-dev. For details see Package Development Prerequisites.

Using The Package

library(lolog)
library(network)
data(ukFaculty)

# Delete 2 vertices missing group
delete.vertices(ukFaculty, which(is.na(ukFaculty %v% "Group")))

# A dyad independent model
fitind <- lolog(ukFaculty ~ edges() + nodeMatch("GroupC") + nodeCov("GroupC"))
summary(fitind)

Development

Development Practices and Policies for Contributers

Using Eclipse

This package is set up as an Eclipse project, and the C++ code can be compiled and run without reinstalling the package. To set up in your eclipse IDE, select import project -> General -> Existing Projects into Workspace and select the lolog directory.

This project was set up following the methods outlined in:

http://blog.fellstat.com/?p=170