Lifted graphical models provide a language for expressing dependencies between different types of entities, their attributes, and their diverse relations, as well as techniques for probabilistic reasoning in such multi-relational domains. In this survey, we review a general form for a lifted graphical model, a par-factor graph, and show how a number of existing statistical relational representations map to this formalism. We discuss inference algorithms, including lifted inference algorithms, that efficiently compute the answers to probabilistic queries over such models. We also review work in learning lifted graphical models from data. There is a growing need for statistical relational models (whether they go by that name or another), as w...
Various representations and inference methods have been proposed for lifted probabilistic inference ...
Probabilistic graphical model representations of relational data provide a number of desired feature...
In numerous real world applications, from sensor networks to computer vision to natural text process...
Lifted graphical models provide a language for expressing dependencies between different types of en...
Lifted graphical models provide a language for expressing dependencies between different types of en...
Statistical relational models combine aspects of first-order logic and probabilistic graphical model...
Statistical relational models combine aspects of first-order logic, databases and probabilistic grap...
Probabilistic Relational Graphical Model (PRGM) is a popular tool for modeling uncertain relational ...
This tutorial explains the core ideas behind lifted probabilistic inference in statistical relationa...
Probabilistic Graphical Models (PGMs) promise to play a prominent role in many complex real-world sy...
The world around us is composed of entities, each having various properties and participating in rel...
Lifted probabilistic inference algorithms exploit regularities in the structure of graphical models ...
Statistical Relational Learning is a new branch of machine learning that aims to model a joint distr...
Thesis (Ph.D.)--University of Washington, 2015One of the central challenges of statistical relationa...
Whenever a person or an automated system has to reason in uncertain domains, probability theory is n...
Various representations and inference methods have been proposed for lifted probabilistic inference ...
Probabilistic graphical model representations of relational data provide a number of desired feature...
In numerous real world applications, from sensor networks to computer vision to natural text process...
Lifted graphical models provide a language for expressing dependencies between different types of en...
Lifted graphical models provide a language for expressing dependencies between different types of en...
Statistical relational models combine aspects of first-order logic and probabilistic graphical model...
Statistical relational models combine aspects of first-order logic, databases and probabilistic grap...
Probabilistic Relational Graphical Model (PRGM) is a popular tool for modeling uncertain relational ...
This tutorial explains the core ideas behind lifted probabilistic inference in statistical relationa...
Probabilistic Graphical Models (PGMs) promise to play a prominent role in many complex real-world sy...
The world around us is composed of entities, each having various properties and participating in rel...
Lifted probabilistic inference algorithms exploit regularities in the structure of graphical models ...
Statistical Relational Learning is a new branch of machine learning that aims to model a joint distr...
Thesis (Ph.D.)--University of Washington, 2015One of the central challenges of statistical relationa...
Whenever a person or an automated system has to reason in uncertain domains, probability theory is n...
Various representations and inference methods have been proposed for lifted probabilistic inference ...
Probabilistic graphical model representations of relational data provide a number of desired feature...
In numerous real world applications, from sensor networks to computer vision to natural text process...