Litcius/Paper detail

BANSHEE–A MATLAB toolbox for Non-Parametric Bayesian Networks

Dominik Paprotny, Oswaldo Morales‐Nápoles, D.T.H. Worm, Elisa Ragno

2020SoftwareX36 citationsDOIOpen Access PDF

Abstract

Bayesian Networks (BNs) are probabilistic, graphical models for representing complex dependency structures. They have many applications in science and engineering. Their particularly powerful variant – Non-Parametric BNs – are for the first time implemented as an open-access scriptable code, in the form of a MATLAB toolbox “BANSHEE”.1 The software allows for quantifying the BN, validating the underlying assumptions of the model, visualizing the network and its corresponding rank correlation matrix, and finally making inference with a BN based on existing or new evidence. We also include in the toolbox, and discuss in the paper, some applied BN models published in most recent scientific literature.

Topics & Concepts

ToolboxComputer scienceGraphical modelBayesian networkMATLABParametric statisticsProbabilistic logicInferenceSoftwareDependency (UML)Data miningTheoretical computer scienceMachine learningArtificial intelligenceProgramming languageMathematicsStatisticsBayesian Modeling and Causal InferenceData Quality and ManagementData Visualization and Analytics