Mixture Approximations to Bayesian Networks
Volker Tresp, Michael Haft, Reimar Hofmann

TL;DR
This paper proposes a method to approximate Bayesian network distributions with mixtures, providing a more intuitive overview of the domain and simplifying inference, especially when using mean squared error as the divergence measure.
Contribution
It introduces a novel mixture approximation approach for Bayesian networks using mean squared error, enabling easier interpretation and inference.
Findings
Mixture components represent typical scenarios in the domain.
Using mean squared error simplifies the computation with junction trees.
Approximate models offer intuitive insights into the Bayesian network.
Abstract
Structure and parameters in a Bayesian network uniquely specify the probability distribution of the modeled domain. The locality of both structure and probabilistic information are the great benefits of Bayesian networks and require the modeler to only specify local information. On the other hand this locality of information might prevent the modeler - and even more any other person - from obtaining a general overview of the important relationships within the domain. The goal of the work presented in this paper is to provide an "alternative" view on the knowledge encoded in a Bayesian network which might sometimes be very helpful for providing insights into the underlying domain. The basic idea is to calculate a mixture approximation to the probability distribution represented by the Bayesian network. The mixture component densities can be thought of as representing typical scenarios…
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Taxonomy
TopicsBayesian Modeling and Causal Inference · Data Management and Algorithms · Statistical Methods and Bayesian Inference
