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  4. On lifted pagerank, kalman filter and towards lifted linear program solving
 
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2011
Conference Paper
Title

On lifted pagerank, kalman filter and towards lifted linear program solving

Abstract
Lifted message passing algorithms exploit repeated structure within a given graphical model to answer queries efficiently. Given evidence, they construct a lifted network of supernodes and superpotentials corresponding to sets of nodes and potentials that are indistinguishable given the evidence. Recently, efficient algorithms were presented for updating the structure of an existing lifted network with incremental changes to the evidence. In the inference stage, however, current algorithms need to construct a separate lifted network for each evidence case and run a modified message passing algorithm on each lifted network separately. Consequently, symmetries across the inference tasks are not exploited. In this paper, we present a novel lifted message passing technique that exploits symmetries across multiple evidence cases. The benefits of this multi-evidence lifted inference are shown for several important AI tasks such as solving linear programs, computing personaliz ed PageRanks and Kalman filters via multi-evidence lifted Gaussian belief propagation.
Author(s)
Ahmadi, B.
Mladenov, M.
Kersting, Kristian  
Sanner, S.
Mainwork
LWA 2011  
Conference
Symposium "Lernen, Wissen, Adaptivität" (LWA) 2011  
Language
English
Fraunhofer-Institut für Intelligente Analyse- und Informationssysteme IAIS  
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