Probabilistic logic programming (PLP) provides a powerful tool for reasoning with uncertain relational models. However, learning probabilistic logic programs is expensive due to the high cost of inference. Among the proposals to overcome this problem, one of the most promising is lifted inference. In this paper we consider PLP models that are amenable to lifted inference and present an algorithm for performing parameter and structure learning of these models from positive and negative examples. We discuss parameter learning with EM and LBFGS and structure learning with LIFTCOVER, an algorithm similar to SLIPCOVER. The results of the comparison of LIFTCOVER with SLIPCOVER on 12 datasets show that it can achieve solutions of similar or better...
Probabilistic logical languages provide power-ful formalisms for knowledge representation and learni...
We introduce a general framework for defining classes of probabilistic-logic models and associated c...
One of the big challenges in the development of probabilistic relational (or probabilistic logical) ...
Due to its expressiveness and intuitiveness, Probabilistic logic programming (PLP) is a useful tool ...
Probabilistic logic programming (PLP) combines logic programs and probabilities. Due to its expressi...
Lifted inference aims at answering queries from statistical relational models by reasoning on popula...
Learning probabilistic logic programming languages is receiving an increasing attention and systems ...
There is a growing interest in the eld of Probabilistic Inductive Logic Programming, which uses lan...
A probabilistic program often gives rise to a complicated underlying probabilistic model. Performing...
A key challenge in information and knowledge manage-ment is to automatically discover the underlying...
Representing, learning, and reasoning about knowledge are central to artificial intelligence (AI). A...
Probabilistic logic programming (PLP) is a powerful tool for reasoning in relational domains with un...
Probabilistic logic programs are logic programs in which some of the facts are annotated with probab...
Lifted inference has been proposed for various probabilistic logical frameworks in order to comp...
Probabilistic logical languages provide powerful formalisms for knowledge representation and learnin...
Probabilistic logical languages provide power-ful formalisms for knowledge representation and learni...
We introduce a general framework for defining classes of probabilistic-logic models and associated c...
One of the big challenges in the development of probabilistic relational (or probabilistic logical) ...
Due to its expressiveness and intuitiveness, Probabilistic logic programming (PLP) is a useful tool ...
Probabilistic logic programming (PLP) combines logic programs and probabilities. Due to its expressi...
Lifted inference aims at answering queries from statistical relational models by reasoning on popula...
Learning probabilistic logic programming languages is receiving an increasing attention and systems ...
There is a growing interest in the eld of Probabilistic Inductive Logic Programming, which uses lan...
A probabilistic program often gives rise to a complicated underlying probabilistic model. Performing...
A key challenge in information and knowledge manage-ment is to automatically discover the underlying...
Representing, learning, and reasoning about knowledge are central to artificial intelligence (AI). A...
Probabilistic logic programming (PLP) is a powerful tool for reasoning in relational domains with un...
Probabilistic logic programs are logic programs in which some of the facts are annotated with probab...
Lifted inference has been proposed for various probabilistic logical frameworks in order to comp...
Probabilistic logical languages provide powerful formalisms for knowledge representation and learnin...
Probabilistic logical languages provide power-ful formalisms for knowledge representation and learni...
We introduce a general framework for defining classes of probabilistic-logic models and associated c...
One of the big challenges in the development of probabilistic relational (or probabilistic logical) ...