Parameterized completeness results for Bayesian inference
Publication year
2022In
Proceedings of the 11th International Conference on Probabilistic Graphical Models, pp. 145-156Related links
Annotation
PGM 2022: The 11th International Conference on Probabilistic Graphical Models (Almería, Spain, October 5-7. 2022)
Publication type
Article in monograph or in proceedings
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Organization
SW OZ DCC CO
SW OZ DCC AI
Languages used
English (eng)
Book title
Proceedings of the 11th International Conference on Probabilistic Graphical Models
Page start
p. 145
Page end
p. 156
Subject
Action, intention, and motor control; Cognitive artificial intelligenceAbstract
We present completeness results for inference in Bayesian networks with respect to two different parameterizations, namely the number of variables and the topological vertex separation number. For this we introduce the parameterized complexity classes W[1]PP and XLPP, which relate to W[1] and XNLP respectively as PP does to NP. The second parameter is intended as a natural translation of the notion of pathwidth to the case of directed acyclic graphs, and as such it is a stronger parameter than the more commonly considered treewidth. Based on a recent conjecture, the completeness results for this parameter suggest that deterministic algorithms for inference require exponential space in terms of pathwidth and by extension treewidth. These results are intended to contribute towards a more precise understanding of the parameterized complexity of Bayesian inference and thus of its required computational resources in terms of both time and space.
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- Academic publications [244084]
- Electronic publications [131085]
- Faculty of Social Sciences [30029]
- Open Access publications [105129]
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