One key challenge in statistical relational learning (SRL) is scalable inference. Unfortunately, most real-world problems in SRL have expressive models that translate into large grounded networks, representing a bottleneck for any inference method and weakening its scalability. In this paper we introduce Preference Relaxation (PR), a two-stage strategy that uses the determinism present in the underlying model to improve the scalability of relational inference. The basic idea of PR is that if the underlying model involves mandatory (i.e. hard) constraints as well as preferences (i.e. soft constraints) then it is potentially wasteful to allocate memory for all constraints in advance when performing inference. To avoid this, PR starts by rela...
Statistical relational learning (SRL) augments probabilistic models with relational representations ...
This tutorial explains the core ideas behind lifted probabilistic inference in statistical relationa...
The primary difference between propositional (attribute-value) and relational data is the existence ...
One key challenge in statistical relational learning (SRL) is scalable inference. Unfortunately, mos...
We consider lifted importance sampling (LIS), a previously proposed approximate inference algorithm ...
We live in a richly interconnected world and, not surprisingly, we generate richly interconnected da...
Many inference problems are naturally formulated using hard and soft constraints over relational dom...
We present a new statistical relational learning (SRL) framework that supports reasoning with soft q...
Statistical relational learning (SRL) frameworks allow users to create large, complex graphical mode...
Thesis (Ph.D.)--University of Washington, 2015One of the central challenges of statistical relationa...
Dependency networks approximate a joint probability distribution over multiple random variables as a...
Many individuals on social networking sites provide traits about themselves, such as interests or de...
A brief note on why we think that the statistical relational learning framework is a great advanceme...
Many individuals on social networking sites provide traits about themselves, such as interests or de...
One of the obstacles to widely using first-order logic languages is the fact that relational inferen...
Statistical relational learning (SRL) augments probabilistic models with relational representations ...
This tutorial explains the core ideas behind lifted probabilistic inference in statistical relationa...
The primary difference between propositional (attribute-value) and relational data is the existence ...
One key challenge in statistical relational learning (SRL) is scalable inference. Unfortunately, mos...
We consider lifted importance sampling (LIS), a previously proposed approximate inference algorithm ...
We live in a richly interconnected world and, not surprisingly, we generate richly interconnected da...
Many inference problems are naturally formulated using hard and soft constraints over relational dom...
We present a new statistical relational learning (SRL) framework that supports reasoning with soft q...
Statistical relational learning (SRL) frameworks allow users to create large, complex graphical mode...
Thesis (Ph.D.)--University of Washington, 2015One of the central challenges of statistical relationa...
Dependency networks approximate a joint probability distribution over multiple random variables as a...
Many individuals on social networking sites provide traits about themselves, such as interests or de...
A brief note on why we think that the statistical relational learning framework is a great advanceme...
Many individuals on social networking sites provide traits about themselves, such as interests or de...
One of the obstacles to widely using first-order logic languages is the fact that relational inferen...
Statistical relational learning (SRL) augments probabilistic models with relational representations ...
This tutorial explains the core ideas behind lifted probabilistic inference in statistical relationa...
The primary difference between propositional (attribute-value) and relational data is the existence ...