| AIC.abnFit | Print AIC of objects of class 'abnFit' |
| BIC.abnFit | Print BIC of objects of class 'abnFit' |
| build.control | Control the iterations in 'buildScoreCache' |
| check.valid.fitControls | Simple check on the control parameters |
| coef.abnFit | Print coefficients of objects of class 'abnFit' |
| compareDag | Compare two DAGs or EGs |
| compareEG | Compare two DAGs or EGs |
| discretization | Discretization of a Possibly Continuous Data Frame of Random Variables based on their distribution |
| entropyData | Computes an Empirical Estimation of the Entropy from a Table of Counts |
| essentialGraph | Construct the essential graph |
| expit | expit of proportions |
| expit_cpp | expit function |
| family.abnFit | Print family of objects of class 'abnFit' |
| fit.control | Control the iterations in 'fitAbn' |
| getMSEfromModes | Extract Standard Deviations from all Gaussian Nodes |
| infoDag | Compute standard information for a DAG. |
| linkStrength | Returns the strengths of the edge connections in a Bayesian Network learned from observational data |
| logit | Logit of proportions |
| logit_cpp | logit functions |
| logLik.abnFit | Print logLik of objects of class 'abnFit' |
| mb | Compute the Markov blanket |
| miData | Empirical Estimation of the Entropy from a Table of Counts |
| modes2coefs | Convert modes to fitAbn.mle$coefs structure |
| mostProbable | Find most probable DAG structure |
| nobs.abnFit | Print number of observations of objects of class 'abnFit' |
| odds | Probability to odds |
| or | Odds Ratio from a matrix |
| plot.abnDag | Plots DAG from an object of class 'abnDag' |
| plot.abnFit | Plot objects of class 'abnFit' |
| plot.abnHeuristic | Plot objects of class 'abnHeuristic' |
| plot.abnHillClimber | Plot objects of class 'abnHillClimber' |
| plot.abnMostprobable | Plot objects of class 'abnMostprobable' |
| print.abnCache | Print objects of class 'abnCache' |
| print.abnDag | Print objects of class 'abnDag' |
| print.abnFit | Print objects of class 'abnFit' |
| print.abnHeuristic | Print objects of class 'abnHeuristic' |
| print.abnHillClimber | Print objects of class 'abnHillClimber' |
| print.abnMostprobable | Print objects of class 'abnMostprobable' |
| scoreContribution | Compute the score's contribution in a network of each observation. |
| searchHeuristic | A family of heuristic algorithms that aims at finding high scoring directed acyclic graphs |
| searchHillClimber | Find high scoring directed acyclic graphs using heuristic search. |
| simulateAbn | Simulate data from a fitted additive Bayesian network. |
| simulateDag | Simulate a DAG with with arbitrary arcs density |
| skewness | Computes skewness of a distribution |
| summary.abnDag | Prints summary statistics from an object of class 'abnDag' |
| summary.abnFit | Print summary of objects of class 'abnFit' |
| summary.abnMostprobable | Print summary of objects of class 'abnMostprobable' |
| toGraphviz | Convert a DAG into graphviz format |