Abstract. There is currently a large interest in probabilistic logical models. A popu-lar algorithm for approximate probabilistic inference with such models is Gibbs sampling. From a computational perspective, Gibbs sampling boils down to repeatedly executing cer-tain queries on a knowledge base composed of a static part and a dynamic part. The larger the static part, the more redundancy there is in these repeated calls. This is problematic since inefficient Gibbs sampling yields poor approximations. We show how to apply program specialization to make Gibbs sampling more efficient. Con-cretely, we develop an algorithm that specializes the definitions of the query-predicates with respect to the static part of the knowledge base. In experimen...
Probabilistic programming is becoming an attractive approach to probabilistic machine learning. Thro...
In today’s machine learning research, probabilistic graphical models are used extensively to model c...
In numerous real world applications, from sensor networks to computer vision to natural text process...
There is currently a large interest in probabilistic logical models. A popular algorithm for approxi...
There is currently a large interest in probabilistic logical models. A popular algorithm for approxi...
We have a probabilistic statistical model which is required to adapt in the light of observed cases...
We introduce a methodology for performing approximate computations in very complex probabilistic sy...
Inference is a central problem in probabilistic graphical models, and is often the main sub-step in ...
One of the current challenges in artificial intelligence is modeling dynamic environments that chang...
Probabilistic Logic Programming is receiving an increasing attention for its ability to model domain...
We present a new semantics sensitive sampling algorithm for probabilistic pro-grams, which are “usua...
Probabilistic Logic Programming is receiving an increasing attention for its ability to model domain...
First-order probabilistic models combine the power of first-order logic, the de facto tool for handl...
Probabilistic models used in quantitative sciences have historically co-evolved with methods for per...
One of the current challenges in artificial intelligence is modeling dynamic environments that chang...
Probabilistic programming is becoming an attractive approach to probabilistic machine learning. Thro...
In today’s machine learning research, probabilistic graphical models are used extensively to model c...
In numerous real world applications, from sensor networks to computer vision to natural text process...
There is currently a large interest in probabilistic logical models. A popular algorithm for approxi...
There is currently a large interest in probabilistic logical models. A popular algorithm for approxi...
We have a probabilistic statistical model which is required to adapt in the light of observed cases...
We introduce a methodology for performing approximate computations in very complex probabilistic sy...
Inference is a central problem in probabilistic graphical models, and is often the main sub-step in ...
One of the current challenges in artificial intelligence is modeling dynamic environments that chang...
Probabilistic Logic Programming is receiving an increasing attention for its ability to model domain...
We present a new semantics sensitive sampling algorithm for probabilistic pro-grams, which are “usua...
Probabilistic Logic Programming is receiving an increasing attention for its ability to model domain...
First-order probabilistic models combine the power of first-order logic, the de facto tool for handl...
Probabilistic models used in quantitative sciences have historically co-evolved with methods for per...
One of the current challenges in artificial intelligence is modeling dynamic environments that chang...
Probabilistic programming is becoming an attractive approach to probabilistic machine learning. Thro...
In today’s machine learning research, probabilistic graphical models are used extensively to model c...
In numerous real world applications, from sensor networks to computer vision to natural text process...