A Taxonomy of Explainable Bayesian Networks
Iena Petronella Derks, Alta de Waal

TL;DR
This paper introduces a comprehensive taxonomy for explainability in Bayesian networks, aiming to improve user understanding and trust by systematically categorizing explanation methods within probabilistic models.
Contribution
It extends existing explainability frameworks to include decision explanations and illustrates the taxonomy with a medical diagnostic example.
Findings
Provides a structured taxonomy for explainability in Bayesian networks
Enhances understanding of how and why predictions are made
Supports better communication and trust in AI decisions
Abstract
Artificial Intelligence (AI), and in particular, the explainability thereof, has gained phenomenal attention over the last few years. Whilst we usually do not question the decision-making process of these systems in situations where only the outcome is of interest, we do however pay close attention when these systems are applied in areas where the decisions directly influence the lives of humans. It is especially noisy and uncertain observations close to the decision boundary which results in predictions which cannot necessarily be explained that may foster mistrust among end-users. This drew attention to AI methods for which the outcomes can be explained. Bayesian networks are probabilistic graphical models that can be used as a tool to manage uncertainty. The probabilistic framework of a Bayesian network allows for explainability in the model, reasoning and evidence. The use of these…
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