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Generalized counting for lifted variable elimination

Authors :
Taghipour, Nima
Davis, Jesse
Publication Year :
2012

Abstract

Lifted probabilistic inference methods exploit symmetries in the structure of probabilistic models to perform inference more efficiently. In lifted variable elimination the symmetry among a group of interchangeable random variables is captured by counting formulas, and exploited by operations that handle such formulas. In this paper we generalize the structure of counting formulas and present a set of inference operators that introduce and eliminate these formulas from the model. This generalization expands the range of problems that can be solved in a lifted way. Our work is closely related to the recently introduced method of joint conversion. Due to its more fine grained formulation, however, our approach can provide more efficient solutions than joint conversion. ispartof: pages:1-8 ispartof: Proceedings of the Second International Workshop on Statistical Relational AI (StaRAI) pages:1-8 ispartof: International Workshop on Statistical Relational AI (StaRAI-12) location:Catalina Island, CA, USA date:18 Aug - 18 Aug 2012 status: published

Subjects

Subjects :
Lifted probabilistic inference

Details

Language :
English
Database :
OpenAIRE
Accession number :
edsair.od......1131..e69cc3bd5f494c13c98e978d835ebd5c