This paper provides a study of probabilistic modelling, inference and learning in a logic-based setting. We show how probability densities, being functions, can be represented and reasoned with naturally and directly in higher-order logic, an expressive formalism not unlike the (informal) everyday language of mathematics. We give efficient inference algorithms and illustrate the general approach with a diverse collection of applications. Some learning issues are also considered
Probabilistic logical languages provide powerful formalisms for knowledge representation and learnin...
Steffen Michels Hybrid Probabilistic Logics: Theoretical Aspects, Algorithms and Experiments Probabi...
Probabilistic inductive logic programming (PILP), sometimes also called statistical relational learn...
We offer a view on how probability is related to logic. Specifically, we argue against the widely he...
Probabilistic logic programs are logic programs in which some of the facts are annotated with probab...
Probabilistic logic learning (PLL), sometimes also called statistical relational learning, addresses...
Probabilistic Logic Programming extends Logic Programming by enabling the representation of uncertai...
I examine the idea of incorporating probability into logic for a logic of practical reasoning. I int...
Over the past two decades, statistical machine learning approaches to natural language processing ha...
Probabilistic logic programs are logic programs in which some of the facts are annotated with probab...
Abstract. Probabilistic inductive logic programming, sometimes also called statistical relational le...
AbstractWe offer a view on how probability is related to logic. Specifically, we argue against the w...
Data that has a complex relational structure and in which observations are noisy or partially missin...
A multitude of different probabilistic programming languages exists today, all extending a tradition...
Probabilistic inductive logic programming, sometimes also called statistical relational learning, ad...
Probabilistic logical languages provide powerful formalisms for knowledge representation and learnin...
Steffen Michels Hybrid Probabilistic Logics: Theoretical Aspects, Algorithms and Experiments Probabi...
Probabilistic inductive logic programming (PILP), sometimes also called statistical relational learn...
We offer a view on how probability is related to logic. Specifically, we argue against the widely he...
Probabilistic logic programs are logic programs in which some of the facts are annotated with probab...
Probabilistic logic learning (PLL), sometimes also called statistical relational learning, addresses...
Probabilistic Logic Programming extends Logic Programming by enabling the representation of uncertai...
I examine the idea of incorporating probability into logic for a logic of practical reasoning. I int...
Over the past two decades, statistical machine learning approaches to natural language processing ha...
Probabilistic logic programs are logic programs in which some of the facts are annotated with probab...
Abstract. Probabilistic inductive logic programming, sometimes also called statistical relational le...
AbstractWe offer a view on how probability is related to logic. Specifically, we argue against the w...
Data that has a complex relational structure and in which observations are noisy or partially missin...
A multitude of different probabilistic programming languages exists today, all extending a tradition...
Probabilistic inductive logic programming, sometimes also called statistical relational learning, ad...
Probabilistic logical languages provide powerful formalisms for knowledge representation and learnin...
Steffen Michels Hybrid Probabilistic Logics: Theoretical Aspects, Algorithms and Experiments Probabi...
Probabilistic inductive logic programming (PILP), sometimes also called statistical relational learn...