Bayesian Network Modeling and Analysis
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README.md

Rdoc DOI DOI

Features

  • Create interactive Bayesian Network models in the cloud
  • Learn the structure of your network with powerful structural learning algorithms
  • Learn the paramaters of your network with effective paramater learning methods
  • Measure the importance of connections in your network with node and network measures
  • Generate data from your network and export to your favorite app

Overview

BayesianNetwork is a Shiny web application for Bayesian network modeling and analysis, powered by the excellent bnlearn and networkD3 packages. This app is a more general version of the RiskNetwork web app. To learn more about our project, check out this publication.

Getting Started

To install BayesianNetwork in R:

install.packages("BayesianNetwork")

Or to install the latest developmental version:

devtools::install_github('paulgovan/BayesianNetwork')

To launch the app:

BayesianNetwork::BayesianNetwork()

Or to access the app through a browser, visit paulgovan.shinyapps.io/BayesianNetwork.

Example

Home

Launching the app brings up the Home tab. The Home tab is basically a landing page that gives a brief introduction to the app and includes two value boxes, one each for the number of nodes and arcs in the network. The following figure shows the basic Home tab.

Home

BayesianNetwork comes with a number of simulated and "real world" data sets. This example will use the "Sample Discrete Network", which is the selected network by default.

Structure

Click Structure in the sidepanel to begin learning the network from the data. The Bayesian network is automatically displayed in the Bayesian Network box.

In order to learn the structure of a network for a given data set, upload the data set in csv format using The Data Input box. Data should be numeric or factored and should not contain any NULL/NaN/NA values. Again, this example uses the "Sample Discrete Network", which should already be loaded.

Select a learning algorithm from the Structural Learning box. The classes of available structural learning algorithms include:

  • Constraint-based algorithms
  • Score-based algorithms
  • Hybrid-structure algorithms
  • Local discovery algorithms

To view the network score, select a score function from the The Network Score box.

Structure

"Sample Discrete Network" contains six discrete variables, stored as factors with either 2 or 3 levels. The structure of this simple Bayesian network can be learned using the grow-shrink algorithm, which is the selected algorithm by default.

Try different combinations of structural learning algorithms and score functions in order to see the effect (if any) on the resulting Bayesian network.

Parameters

Select the grow-shrink algorithm once again and then click Parameters in the sidepanel in order to learn the parameters of the network. The selected paramaters are automically displayed in the Network Paramaters box.

Select a learning algorithm from the Parameter Learning box. This app supports both maximum-likelihood and Bayesian estimation of the parameters. Note that Bayesian parameter learning is currently only implemented for discrete data sets. Then select the type of chart to display in the Paramter Infographic box and, for the discrete case, choose the preferred node. For example, the selected node A is a discrete node with three levels: a, b, and c.

Parameters

Inference

Click Inference in the sidebar to add evidence to the network. Select evidence to add to the model using the Evidence box and select a conditional event of interest using the Event box. The resulting conditional probabilities are automatically displayed in the Event Parameter box. For example, the following figure shows the conditional probability of event B, given evidence of c for node A. Changing the evidence for node A to a or b similarly changes the conditional probability of event B. Note that inference is currently not supported for continuous variables.

Inference

Measures

Click Measures in the sidepanel to bring up a number of tools for classic network analysis. The Measures tab has a number of node and network measures. The node measures include:

  • Markov blanket
  • Neighborhood
  • Parents
  • Children
  • In degree
  • Out degree
  • Incident arcs
  • Incoming arcs
  • Outgoing arcs

Select a node measure in the Controls box and the result will be displayed in the Node Measure box.

The Controls box also contains different options for displaying hierarchical clusters/dendograms for the network. Select the type of dendogram to display (row, column, both, or none) and the resulting dendogram(s) will be displayed along with the adjacency matrix in the Adjacency Matrix box.

Measures

Editor

Finally, click Editor in the sidepanel in order to bring up the interactive code editor. Some example markdown is automatically displayed in the Editor box. Click the Run button to knit the code and the resulting report will be displayed in the body of the app.

Simulation

Please let us know if there are things you would like to see added (or problems with the app!) by opening up an issue using the GitHub issue tracker at https://github.com/paulgovan/BayesianNetwork/issues

Source Code

BayesianNetwork is an open source project, and the source code is available at https://github.com/paulgovan/BayesianNetwork

Contributions

Contributions are welcome by sending a pull request

License

BayesianNetwork is licensed under the Apache licence. © Paul Govan (2015)