High-Dimensional Inference in Bayesian Networks
Inference of the marginal probability distribution is defined as the calculation of the probability of a subset of the variables and is relevant for handling missing data and hidden variables. While inference of the marginal probability distribution is crucial for various problems in machine learnin...
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Zusammenfassung: | Inference of the marginal probability distribution is defined as the
calculation of the probability of a subset of the variables and is relevant for
handling missing data and hidden variables. While inference of the marginal
probability distribution is crucial for various problems in machine learning
and statistics, its exact computation is generally not feasible for categorical
variables in Bayesian networks due to the NP-hardness of this task. We develop
a divide-and-conquer approach using the graphical properties of Bayesian
networks to split the computation of the marginal probability distribution into
sub-calculations of lower dimensionality, thus reducing the overall
computational complexity. Exploiting this property, we present an efficient and
scalable algorithm for calculating the marginal probability distribution for
categorical variables. The novel method is compared against state-of-the-art
approximate inference methods in a benchmarking study, where it displays
superior performance. As an immediate application, we demonstrate how our
method can be used to classify incomplete data against Bayesian networks and
use this approach for identifying the cancer subtype of kidney cancer patient
samples. |
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DOI: | 10.48550/arxiv.2112.09217 |