Lifted inference approaches have rendered large, previously intractable probabilistic inference problems quickly solvable by handling whole sets of indistinguishable objects together. Triggered by this success, we show that another important AI technique is liftable, too, namely linear programming. Intuitively, given a linear program (LP), we employ a lifted variant of Gaussian belief propagation (GaBP) to solve the systems of linear equations arising when running an interiorpoint method to solve the LP. However, this naïve solution cannot make use of standard solvers for linear equations and is doomed to construct lifted networks in each iteration of the interior-point method again, an operation that can itself be quite costly. To address...
Lifted inference, handling whole sets of indistinguishable objects together, is critical to the eff...
Probabilistic logical languages provide powerful formalisms for knowledge representation and learnin...
We propose an approach to lifted approximate inference for first-order probabilistic models, such as...
Many AI applications need to explicitly represent relational structure as well as handle uncertainty...
Lifted belief propagation (LBP) can be extremely fast at computing approximate marginal probability ...
A probabilistic program often gives rise to a complicated underlying probabilistic model. Performing...
In this paper, we present a new approach for lifted MAP inference in Markov logic networks (MLNs). T...
In this paper, we present a new approach for lifted MAP inference in Markov logic networks (MLNs). T...
Symmetry is the essential element of lifted inferencethat has recently demonstrated the possibility ...
By handling whole sets of indistinguishable objects together, lifted belief propagation approaches h...
By handling whole sets of indistinguishable objects together, lifted belief propagation approaches h...
Judging by the increasing impact of machine learning on large-scale data analysis in the last decade...
Abstract—Belief Propagation (BP) is a popular, distributed heuristic for performing MAP computations...
In this paper, the paradigm of linear detection is being reformulated as a Gaussian belief propagati...
Lifted inference, handling whole sets of indistinguishable objects together, is critical to the effe...
Lifted inference, handling whole sets of indistinguishable objects together, is critical to the eff...
Probabilistic logical languages provide powerful formalisms for knowledge representation and learnin...
We propose an approach to lifted approximate inference for first-order probabilistic models, such as...
Many AI applications need to explicitly represent relational structure as well as handle uncertainty...
Lifted belief propagation (LBP) can be extremely fast at computing approximate marginal probability ...
A probabilistic program often gives rise to a complicated underlying probabilistic model. Performing...
In this paper, we present a new approach for lifted MAP inference in Markov logic networks (MLNs). T...
In this paper, we present a new approach for lifted MAP inference in Markov logic networks (MLNs). T...
Symmetry is the essential element of lifted inferencethat has recently demonstrated the possibility ...
By handling whole sets of indistinguishable objects together, lifted belief propagation approaches h...
By handling whole sets of indistinguishable objects together, lifted belief propagation approaches h...
Judging by the increasing impact of machine learning on large-scale data analysis in the last decade...
Abstract—Belief Propagation (BP) is a popular, distributed heuristic for performing MAP computations...
In this paper, the paradigm of linear detection is being reformulated as a Gaussian belief propagati...
Lifted inference, handling whole sets of indistinguishable objects together, is critical to the effe...
Lifted inference, handling whole sets of indistinguishable objects together, is critical to the eff...
Probabilistic logical languages provide powerful formalisms for knowledge representation and learnin...
We propose an approach to lifted approximate inference for first-order probabilistic models, such as...