Handling Overlaps When Lifting Gaussian Bayesian Networks
- Link:
- Autor/in:
- Beteiligte Person:
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- Zhou, Zhi-Hua
- Erscheinungsjahr:
- 2021
- Medientyp:
- Text
- Schlagworte:
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- "Logic Programming; Exact Inference; Answer Sets"
- "Artificial Intelligence; Algorithms; Semantics"
- "Logic Programming; Exact Inference; Answer Sets"
- "Artificial Intelligence; Algorithms; Semantics"
- Beschreibung:
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Gaussian Bayesian networks are widely used for modeling the behavior of continuous random variables. Lifting exploits symmetries when dealing with large numbers of isomorphic random variables. It provides a more compact representation for more efficient query answering by encoding the symmetries using logical variables. This paper improves on an existing lifted representation of the joint distribution represented by a Gaussian Bayesian network (lifted joint), allowing overlaps between the logical variables. Handling overlaps without grounding a model is critical for modelling real-world scenarios. Specifically, this paper contributes (i) a lifted joint that allows overlaps in logical variables and (ii) a lifted query answering algorithm using the lifted joint. Complexity analyses and experimental results show that - despite overlaps - constructing a lifted joint and answering queries on the lifted joint outperform their grounded counterparts significantly.
- Lizenz:
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- info:eu-repo/semantics/restrictedAccess
- Quellsystem:
- Forschungsinformationssystem der UHH
Interne Metadaten
- Quelldatensatz
- oai:www.edit.fis.uni-hamburg.de:publications/571348cb-bfd0-423c-8779-03b6e74d363d