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bnlearn (version 4.8.1)

Bayesian Network Structure Learning, Parameter Learning and Inference

Description

Bayesian network structure learning, parameter learning and inference. This package implements constraint-based (PC, GS, IAMB, Inter-IAMB, Fast-IAMB, MMPC, Hiton-PC, HPC), pairwise (ARACNE and Chow-Liu), score-based (Hill-Climbing and Tabu Search) and hybrid (MMHC, RSMAX2, H2PC) structure learning algorithms for discrete, Gaussian and conditional Gaussian networks, along with many score functions and conditional independence tests. The Naive Bayes and the Tree-Augmented Naive Bayes (TAN) classifiers are also implemented. Some utility functions (model comparison and manipulation, random data generation, arc orientation testing, simple and advanced plots) are included, as well as support for parameter estimation (maximum likelihood and Bayesian) and inference, conditional probability queries, cross-validation, bootstrap and model averaging. Development snapshots with the latest bugfixes are available from .

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Version

Install

install.packages('bnlearn')

Monthly Downloads

22,169

Version

4.8.1

License

GPL (>= 2)

Maintainer

Marco Scutari

Last Published

September 21st, 2022

Functions in bnlearn (4.8.1)

bn.cv

Cross-validation for Bayesian networks
asia

Asia (synthetic) data set by Lauritzen and Spiegelhalter
arc operations

Drop, add or set the direction of an arc or an edge
bn class

The bn class structure
arc.strength

Measure arc strength
network-classifiers

Bayesian network Classifiers
alpha.star

Estimate the optimal imaginary sample size for BDe(u)
alarm

ALARM monitoring system (synthetic) data set
utilities for whitelists and blacklists

Get or create whitelists and blacklists
BF

Bayes factor between two network structures
bn.boot

Nonparametric bootstrap of Bayesian networks
clgaussian.test

Synthetic (mixed) data set to test learning algorithms
bn.fit class

The bn.fit class structure
bnlearn-package

Bayesian network structure learning, parameter learning and inference
bn.fit

Fit the parameters of a Bayesian network
bn.strength class

The bn.strength class structure
bn.fit utilities

Utilities to manipulate fitted Bayesian networks
bn.fit plots

Plot fitted Bayesian networks
ci.test

Independence and conditional independence tests
bn.kcv class

The bn.kcv class structure
configs

Construct configurations of discrete variables
dsep

Test d-separation
coronary

Coronary heart disease data set
compare

Compare two or more different Bayesian networks
independence-tests

Conditional independence tests
cpquery

Perform conditional probability queries
cpdag

Equivalence classes, moral graphs and consistent extensions
constraint-based algorithms

Constraint-based structure learning algorithms
graph enumeration

Count graphs with specific characteristics
foreign files utilities

Read and write BIF, NET, DSC and DOT files
graph generation utilities

Generate empty or random graphs
hailfinder

The HailFinder weather forecast system (synthetic) data set
gRain integration

Import and export networks from the gRain package
graphviz.chart

Plotting networks with probability bars
graph integration

Import and export networks from the graph package
graphviz.plot

Advanced Bayesian network plots
score-based algorithms

Score-based structure learning algorithms
gaussian.test

Synthetic (continuous) data set to test learning algorithms
graph utilities

Utilities to manipulate graphs
hybrid algorithms

Hybrid structure learning algorithms
lizards

Lizards' perching behaviour data set
local discovery algorithms

Local discovery structure learning algorithms
marks

Examination marks data set
misc utilities

Miscellaneous utilities
single-node local discovery

Discover the structure around a single node
KL

Compute the distance between two fitted Bayesian networks
learning.test

Synthetic (discrete) data set to test learning algorithms
insurance

Insurance evaluation network (synthetic) data set
impute

Predict or impute missing data from a Bayesian network
igraph integration

Import and export networks from the igraph package
multivariate normal distribution

Gaussian Bayesian networks and multivariate normals
node operations

Manipulate nodes in a graph
naive.bayes

Naive Bayes classifiers
data preprocessing

Pre-process data to better learn Bayesian networks
network-scores

Network scores
pcalg integration

Import and export networks from the pcalg package
node ordering utilities

Partial node orderings
plot.bn.strength

Plot arc strengths derived from bootstrap
plot.bn

Plot a Bayesian network
model string utilities

Build a model string from a Bayesian network and vice versa
test counter

Manipulating the test counter
structure-learning

Structure learning algorithms
rbn

Simulate random samples from a given Bayesian network
strength.plot

Arc strength plot
structural.em

Structure learning from missing data
whitelists-blacklists

Whitelists and blacklists in structure learning
score

Score of the Bayesian network
lm integration

Produce lm objects from Bayesian networks
ROCR integration

Generating a prediction object for ROCR