Whenever a person or an automated system has to reason in uncertain domains, probability theory is necessary. Probabilistic graphical models allow us to build statistical models that capture complex dependencies between random variables. Inference in these models, however, can easily become intractable. Typical ways to address this scaling issue are inference by approximate message-passing, stochastic gradients, and MapReduce, among others. Exploiting the symmetries of graphical models, however, has not yet been considered for scaling statistical machine learning applications. One instance of graphical models that are inherently symmetric are statistical relational models. These have recently gained attraction within the machine learning a...
Lifted inference approaches have rendered large, previously intractable probabilistic inference prob...
Lifted graphical models provide a language for expressing dependencies between different types of en...
This tutorial explains the core ideas behind lifted probabilistic inference in statistical relationa...
Judging by the increasing impact of machine learning on large-scale data analysis in the last decade...
Judging by the increasing impact of machine learning on large-scale data analysis in the last decade...
Probabilistic Graphical Models (PGMs) promise to play a prominent role in many complex real-world sy...
online first May 2014Lifted graphical models provide a language for expressing dependencies between ...
With increasing complexity and growing problem sizes in AI and Machine Learning, inference and learn...
Statistical relational models combine aspects of first-order logic, databases and probabilistic grap...
Thesis (Ph.D.)--University of Washington, 2015One of the central challenges of statistical relationa...
Statistical relational models combine aspects of first-order logic and probabilistic graphical model...
Many AI problems arising in a wide variety of fields such as machine learning, semantic web, network...
Lifted graphical models provide a language for expressing dependencies between different types of en...
Lifted probabilistic inference algorithms have been successfully applied to a large number of symmet...
Lifted probabilistic inference algorithms have been successfully applied to a large number of symmet...
Lifted inference approaches have rendered large, previously intractable probabilistic inference prob...
Lifted graphical models provide a language for expressing dependencies between different types of en...
This tutorial explains the core ideas behind lifted probabilistic inference in statistical relationa...
Judging by the increasing impact of machine learning on large-scale data analysis in the last decade...
Judging by the increasing impact of machine learning on large-scale data analysis in the last decade...
Probabilistic Graphical Models (PGMs) promise to play a prominent role in many complex real-world sy...
online first May 2014Lifted graphical models provide a language for expressing dependencies between ...
With increasing complexity and growing problem sizes in AI and Machine Learning, inference and learn...
Statistical relational models combine aspects of first-order logic, databases and probabilistic grap...
Thesis (Ph.D.)--University of Washington, 2015One of the central challenges of statistical relationa...
Statistical relational models combine aspects of first-order logic and probabilistic graphical model...
Many AI problems arising in a wide variety of fields such as machine learning, semantic web, network...
Lifted graphical models provide a language for expressing dependencies between different types of en...
Lifted probabilistic inference algorithms have been successfully applied to a large number of symmet...
Lifted probabilistic inference algorithms have been successfully applied to a large number of symmet...
Lifted inference approaches have rendered large, previously intractable probabilistic inference prob...
Lifted graphical models provide a language for expressing dependencies between different types of en...
This tutorial explains the core ideas behind lifted probabilistic inference in statistical relationa...