By handling whole sets of indistinguishable objects together, lifted belief propagation approaches have rendered large, previously intractable, probabilistic inference problems quickly solvable. In this paper, we show that Kumar and Zilberstein's likelihood maximization (LM) approach to MAP inference is liftable, too, and actually provides additional structure for optimization. Specifically, it has been recognized that some pseudo marginals may converge quickly, turning intuitively into pseudo evidence. This additional evidence typically changes the structure of the lifted network: it may expand or reduce it. The current lifted network, however, can be viewed as an upper bound on the size of the lifted network required to finish likelihood ...
Judging by the increasing impact of machine learning on large-scale data analysis in the last decade...
Lifted message passing approaches can be extremely fast at computing approximate marginal probabilit...
Markov logic networks (MLNs) are a popular statistical relational learning formalism that combine Ma...
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...
Many AI applications need to explicitly represent relational structure as well as handle uncertainty...
Judging by the increasing impact of machine learning on large-scale data analysis in the last decade...
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...
Lifted belief propagation (LBP) can be extremely fast at computing approximate marginal probability ...
Lifting can greatly reduce the cost of inference on first-order probabilistic graphical models, but ...
Lifted inference algorithms for probabilistic first-order logic frameworks such as Markov logic netw...
We propose an approach to lifted approximate inference for first-order probabilistic models, such as...
Markov Logic Networks (MLNs) use a few weighted first-order logic formulas to represent large probab...
Lifted first-order probabilistic inference, which manipulates first-order representations of graphic...
Judging by the increasing impact of machine learning on large-scale data analysis in the last decade...
Lifted message passing approaches can be extremely fast at computing approximate marginal probabilit...
Markov logic networks (MLNs) are a popular statistical relational learning formalism that combine Ma...
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...
Many AI applications need to explicitly represent relational structure as well as handle uncertainty...
Judging by the increasing impact of machine learning on large-scale data analysis in the last decade...
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...
Lifted belief propagation (LBP) can be extremely fast at computing approximate marginal probability ...
Lifting can greatly reduce the cost of inference on first-order probabilistic graphical models, but ...
Lifted inference algorithms for probabilistic first-order logic frameworks such as Markov logic netw...
We propose an approach to lifted approximate inference for first-order probabilistic models, such as...
Markov Logic Networks (MLNs) use a few weighted first-order logic formulas to represent large probab...
Lifted first-order probabilistic inference, which manipulates first-order representations of graphic...
Judging by the increasing impact of machine learning on large-scale data analysis in the last decade...
Lifted message passing approaches can be extremely fast at computing approximate marginal probabilit...
Markov logic networks (MLNs) are a popular statistical relational learning formalism that combine Ma...