R package for Bayesian Network Structure Learning from Data with Missing Values
Bayesian Networks are a powerful tool for
probabilistic inference among a set of variables, modeled using a
directed acyclic graph. However, one often does not have the network,
but only a set of observations, and wants to reconstruct the network
that generated the data. The bnstruct
package provides
objects and methods for learning the structure and parameters of the
network in various situations, such as in presence of missing data, for
which it is possible to perform imputation (guessing the missing
values, by looking at the data). The package also contains methods for
learning using the Bootstrap technique. Finally,
bnstruct
, has a set of additional tools to use Bayesian
Networks, such as methods to perform belief propagation.
In particular, the absence of some observations in the dataset is a very
common situation in real-life applications such as biology or medicine,
but very few software around is devoted to address these problems.
bnstruct
is developed mainly with the purpose of filling
this void.
The latest stable version of bnstruct
is available
on CRAN
and can be installed with
install.packages("bnstruct")
from within an R session.
The latest development version of bnstruct
can be found on GitHub
here.
In order to install the package, it suffices to launch
R CMD INSTALL path/to/bnstruct
from a terminal, or make install
from within the package source folder.
Being hosted on GitHub, it is also possible to use the install_github
tool from an R session:
library("devtools")
install_github("sambofra/bnstruct")
For Windows platforms, a binary executable of the latest stable version is available on CRAN.
bnstruct
requires R >= 2.10
, and depends on
bitops
, igraph
, Matrix
, graph
and
methods
. Package Rgraphviz
is requested in
order to plot graphs, but is not mandatory.
If you bnstruct
in your work, please cite it as:
Alberto Franzin, Francesco Sambo, Barbara di Camillo. "bnstruct: an R package for Bayesian Network structure learning in the presence of missing data." Bioinformatics, 2017; 33 (8): 1250-1252; Oxford University Press.
These information and a BibTeX entry can be found with
citation("bnstruct")