© Copyright 2014 Association for the Advancement of Artificial Intelligence. All rights reserved. Over the last couple of years, the interest in combining probability and logic has grown strongly. This led to the development of different software packages like PRISM, ProbLog and Alchemy, which offer a variety of exact and approximate algorithms to perform inference and learning. What is lacking, however, are algorithms to perform efficient inference in relational temporal models by systematically exploiting temporal and local structure. Since many real-world problems require temporal models, we argue that more research is necessary to use this structure to obtain more efficient inference and learning. While existing relational representatio...
Abstract—Temporal networks are ubiquitous and evolve over time by the addition, deletion, and changi...
We tackle the problem of approximate inference in Probabilistic Relational Models (PRMs) and propose...
Statistical relational models combine aspects of first-order logic and probabilistic graphical model...
Within the field of Artificial Intelligence, there is a lot of interest in combining probability and...
Statistical relational learning formalisms combine first-order logic with proba-bility theory in ord...
One of the goals of artificial intelligence is to develop agents that learn and act in complex envir...
Artificial intelligence aims at developing agents that learn and act in complex environments. Reali...
We introduce a probabilistic language and an efficient inference algorithm based on distributional c...
Counting the number of true instances of a clause is arguably a major bottleneck in relational proba...
Many relational domains contain temporal information and dynamics that are important to model (e.g.,...
This tutorial explains the core ideas behind lifted probabilistic inference in statistical relationa...
Probabilistic Relational Models (PRMs) are a type of directed graphical model used in the setting of...
Abstract. Artificial intelligence aims at developing agents that learn and act in complex environmen...
Thesis (Ph.D.)--University of Washington, 2015One of the central challenges of statistical relationa...
In order to solve real-world tasks, intelligent machines need to be able to act in noisy worlds wher...
Abstract—Temporal networks are ubiquitous and evolve over time by the addition, deletion, and changi...
We tackle the problem of approximate inference in Probabilistic Relational Models (PRMs) and propose...
Statistical relational models combine aspects of first-order logic and probabilistic graphical model...
Within the field of Artificial Intelligence, there is a lot of interest in combining probability and...
Statistical relational learning formalisms combine first-order logic with proba-bility theory in ord...
One of the goals of artificial intelligence is to develop agents that learn and act in complex envir...
Artificial intelligence aims at developing agents that learn and act in complex environments. Reali...
We introduce a probabilistic language and an efficient inference algorithm based on distributional c...
Counting the number of true instances of a clause is arguably a major bottleneck in relational proba...
Many relational domains contain temporal information and dynamics that are important to model (e.g.,...
This tutorial explains the core ideas behind lifted probabilistic inference in statistical relationa...
Probabilistic Relational Models (PRMs) are a type of directed graphical model used in the setting of...
Abstract. Artificial intelligence aims at developing agents that learn and act in complex environmen...
Thesis (Ph.D.)--University of Washington, 2015One of the central challenges of statistical relationa...
In order to solve real-world tasks, intelligent machines need to be able to act in noisy worlds wher...
Abstract—Temporal networks are ubiquitous and evolve over time by the addition, deletion, and changi...
We tackle the problem of approximate inference in Probabilistic Relational Models (PRMs) and propose...
Statistical relational models combine aspects of first-order logic and probabilistic graphical model...