Lifted Probabilistic Inference with Counting Formulas
Author(s)
Haimes, Michael M.; Kaelbling, Leslie P.; Kersting, Kristian; Milch, Brian; Zettlemoyer, Luke S.
DownloadMilch-2008-Lifted Probablistic Inference.pdf (219.7Kb)
MIT_AMENDMENT
MIT Amendment
Article is made available in accordance with the publisher's policy and may be subject to US copyright law. Please refer to the publisher's site for terms of use.
Terms of use
Metadata
Show full item recordAbstract
Lifted inference algorithms exploit repeated structure in probabilistic models to answer queries efficiently. Previous work such as de Salvo Braz et al.'s first-order variable elimination (FOVE) has focused on the sharing of potentials across interchangeable random variables. In this paper, we also exploit interchangeability within individual potentials by introducing counting formulas, which indicate how many of the random variables in a set have each possible value. We present a new lifted inference algorithm, C-FOVE, that not only handles counting formulas in its input, but also creates counting formulas for use in intermediate potentials. C-FOVE can be described succinctly in terms of six operators, along with heuristics for when to apply them. Because counting formulas capture dependencies among large numbers of variables compactly, C-FOVE achieves asymptotic speed improvements compared to FOVE.
Date issued
2008-01Department
Massachusetts Institute of Technology. Computer Science and Artificial Intelligence LaboratoryJournal
Proceedings of the 23rd National Conference on Artificial Intelligence, (AAAI '08)
Publisher
AAAI Press
Citation
Haimes, Michael M., et al. "Lifted probabilistic inference with counting formulas." Proceedings of the 23rd National Conference on Artificial Intelligence (2008): 1062-1068. © 2008 AAAI Press
Version: Final published version
ISBN
978-1-57735-368-3