Coarse-to-fine approaches use sequences of increasingly fine approximations to control the complexity of inference and learning. These techniques are often used in NLP and vision applications. However, no coarse-to-fine inference or learning methods have been developed for general first-order probabilistic domains, where the potential gains are even higher. We present our Coarse-to-Fine Probabilistic Inference (CFPI) framework for general coarse-to-fine inference for first-order probabilistic models, which leverages a given or induced type hierarchy over objects in the domain. Starting by considering the inference problem at the coarsest type level, our approach performs inference at successively finer grains, pruning high- and low-probabil...
In numerous real world applications, from sensor networks to computer vision to natural text process...
Many AI problems arising in a wide variety of fields such as machine learning, semantic web, network...
High dimensional probabilistic models are used for many modern scientific and engineering data analy...
There has been a long standing division in AI between logical symbolic and probabilistic reasoning a...
285 pagesProbabilistic modeling, as known as probabilistic machine learning, provides a principled f...
Most probabilistic inference algorithms are specified and processed on a propositional level. In the...
We introduce a general framework for defining classes of probabilistic-logic models and associated c...
Representations that mix graphical models and first-order logic - called either first-order or relat...
Statistical relational models provide compact encodings of probabilistic dependencies in relational ...
Probabilistic logical languages provide powerful formalisms for knowledge representation and learnin...
Following ideas in Poole~\poole, which we correct, formalize and extend, this paper presents the fir...
Learning to reason and understand the world’s knowledge is a fundamental problem in Artificial Intel...
Probabilistic logical languages provide power-ful formalisms for knowledge representation and learni...
First-order logic is the traditional basis for knowledge representation languages. However, its appl...
We propose an approach to lifted approximate inference for first-order probabilistic models, such as...
In numerous real world applications, from sensor networks to computer vision to natural text process...
Many AI problems arising in a wide variety of fields such as machine learning, semantic web, network...
High dimensional probabilistic models are used for many modern scientific and engineering data analy...
There has been a long standing division in AI between logical symbolic and probabilistic reasoning a...
285 pagesProbabilistic modeling, as known as probabilistic machine learning, provides a principled f...
Most probabilistic inference algorithms are specified and processed on a propositional level. In the...
We introduce a general framework for defining classes of probabilistic-logic models and associated c...
Representations that mix graphical models and first-order logic - called either first-order or relat...
Statistical relational models provide compact encodings of probabilistic dependencies in relational ...
Probabilistic logical languages provide powerful formalisms for knowledge representation and learnin...
Following ideas in Poole~\poole, which we correct, formalize and extend, this paper presents the fir...
Learning to reason and understand the world’s knowledge is a fundamental problem in Artificial Intel...
Probabilistic logical languages provide power-ful formalisms for knowledge representation and learni...
First-order logic is the traditional basis for knowledge representation languages. However, its appl...
We propose an approach to lifted approximate inference for first-order probabilistic models, such as...
In numerous real world applications, from sensor networks to computer vision to natural text process...
Many AI problems arising in a wide variety of fields such as machine learning, semantic web, network...
High dimensional probabilistic models are used for many modern scientific and engineering data analy...