Statistical relational models combine aspects of first-order logic, databases and probabilistic graphical models, enabling them to represent complex logical and probabilistic relations between large numbers of objects. But this level of expressivity comes at a price: inference (i.e., drawing conclusions on the probability of events) becomes highly intractable. Nevertheless, relational models of real-life applications often exhibit a high level of symmetry (i.e., substructures that are modeled in a similar manner). Lifted inference is the art of exploiting that symmetry towards efficient inference. The first part of this tutorial describes the basic ideas underlying lifted inference algorithms, why they work, and how they are fundamentally d...
Lifted inference algorithms exploit symmetries in probabilistic models to speed up inference. They s...
A probabilistic program often gives rise to a complicated underlying probabilistic model. Performing...
We consider lifted importance sampling (LIS), a previously proposed approximate inference algorithm ...
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...
This tutorial explains the core ideas behind lifted probabilistic inference in statistical relationa...
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...
Thesis (Ph.D.)--University of Washington, 2015One of the central challenges of statistical relationa...
Statistical relational models provide compact encodings of probabilistic dependencies in relational ...
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 ...
Relational Continuous Models (RCMs) represent joint prob-ability densities over attributes of object...
In this paper we study lifted inference for the Weighted First-Order Model Counting problem (WFOMC),...
Overview 1. What are statistical relational models? 2. What is lifted inference? 3. How does lifted ...
Lifted inference algorithms exploit symmetries in probabilistic models to speed up inference. They s...
A probabilistic program often gives rise to a complicated underlying probabilistic model. Performing...
We consider lifted importance sampling (LIS), a previously proposed approximate inference algorithm ...
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...
This tutorial explains the core ideas behind lifted probabilistic inference in statistical relationa...
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...
Thesis (Ph.D.)--University of Washington, 2015One of the central challenges of statistical relationa...
Statistical relational models provide compact encodings of probabilistic dependencies in relational ...
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 ...
Relational Continuous Models (RCMs) represent joint prob-ability densities over attributes of object...
In this paper we study lifted inference for the Weighted First-Order Model Counting problem (WFOMC),...
Overview 1. What are statistical relational models? 2. What is lifted inference? 3. How does lifted ...
Lifted inference algorithms exploit symmetries in probabilistic models to speed up inference. They s...
A probabilistic program often gives rise to a complicated underlying probabilistic model. Performing...
We consider lifted importance sampling (LIS), a previously proposed approximate inference algorithm ...