Many AI applications need to explicitly represent relational structure as well as handle uncertainty. First order probabilistic models combine the power of logic and probability to deal with such domains. A naive approach to inference in these models is to propositionalize the whole theory and carry out the inference on the ground network. Lifted inference techniques (such as lifted belief propagation; Singla and Domingos 2008) provide a more scalable approach to inference by combining together groups of objects which behave identically. In many cases, constructing the lifted network can itself be quite costly. In addition, the exact lifted network is often very close in size to the fully propositionalized model. To overcome these problems,...
Probabilistic logical languages provide powerful formalisms for knowledge representation and learnin...
High-level representations of uncertainty, such as probabilistic logics and programs, have been arou...
Judging by the increasing impact of machine learning on large-scale data analysis in the last decade...
Many AI applications need to explicitly represent relational structure as well as handle uncertainty...
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...
We propose an approach to lifted approximate inference for first-order probabilistic models, such as...
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...
Lifted belief propagation (LBP) can be extremely fast at computing approximate marginal probability ...
Representing, learning, and reasoning about knowledge are central to artificial intelligence (AI). A...
Lifted first-order probabilistic inference, which manipulates first-order representations of graphic...
Lifting can greatly reduce the cost of inference on first-order probabilistic graphical models, but ...
Many AI problems arising in a wide variety of fields such as machine learning, semantic web, network...
Statistical relational models combine aspects of first-order logic, databases and probabilistic grap...
Probabilistic logical languages provide powerful formalisms for knowledge representation and learnin...
High-level representations of uncertainty, such as probabilistic logics and programs, have been arou...
Judging by the increasing impact of machine learning on large-scale data analysis in the last decade...
Many AI applications need to explicitly represent relational structure as well as handle uncertainty...
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...
We propose an approach to lifted approximate inference for first-order probabilistic models, such as...
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...
Lifted belief propagation (LBP) can be extremely fast at computing approximate marginal probability ...
Representing, learning, and reasoning about knowledge are central to artificial intelligence (AI). A...
Lifted first-order probabilistic inference, which manipulates first-order representations of graphic...
Lifting can greatly reduce the cost of inference on first-order probabilistic graphical models, but ...
Many AI problems arising in a wide variety of fields such as machine learning, semantic web, network...
Statistical relational models combine aspects of first-order logic, databases and probabilistic grap...
Probabilistic logical languages provide powerful formalisms for knowledge representation and learnin...
High-level representations of uncertainty, such as probabilistic logics and programs, have been arou...
Judging by the increasing impact of machine learning on large-scale data analysis in the last decade...