Recently much work in Machine Learning has concentrated on using expressive representation languages that combine aspects of logic and probability. A whole field has emerged, called Statistical Relational Learning, rich of successful applications in a variety of domains. In this paper we present a Machine Learning technique targeted to Probabilistic Logic Programs, a family of formalisms where uncertainty is represented using Logic Programming tools. Among various proposals for Probabilistic Logic Programming, the one based on the distribution semantics is gaining popularity and is the basis for a number of languages, such as ICL, PRISM, ProbLog and Logic Programs with Annotated Disjunctions. This paper proposes a technique for learning par...
In real world domains the information is often uncertain, hence it is of foremost importance to be a...
A multitude of different probabilistic programming languages exists today, all extending a tradition...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
Recently much work in Machine Learning has concentrated on using expressive representation languages...
Recently much work in Machine Learning has concentrated on representation languages able to combine ...
Recently much work in Machine Learning has concentrated on representation languages able to combine...
There is a growing interest in the eld of Probabilistic Inductive Logic Programming, which uses lan...
Probabilistic logic programs are logic programs in which some of the facts are annotated with probab...
The combination of logic programming and probability has proven useful for modeling domains with com...
This thesis deals with Statistical Relational Learning (SRL), a research area combining principles a...
Probabilistic Logic Programming extends Logic Programming by enabling the representation of uncertai...
Probabilistic logic programs are logic programs in which some of the facts are annotated with probab...
Probabilistic programming is an emerging subfield of AI that extends traditional programming languag...
Probabilistic logic learning (PLL), sometimes also called statistical relational learning, addresses...
Representing uncertain information is crucial for modeling real world domains. This has been fully r...
In real world domains the information is often uncertain, hence it is of foremost importance to be a...
A multitude of different probabilistic programming languages exists today, all extending a tradition...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
Recently much work in Machine Learning has concentrated on using expressive representation languages...
Recently much work in Machine Learning has concentrated on representation languages able to combine ...
Recently much work in Machine Learning has concentrated on representation languages able to combine...
There is a growing interest in the eld of Probabilistic Inductive Logic Programming, which uses lan...
Probabilistic logic programs are logic programs in which some of the facts are annotated with probab...
The combination of logic programming and probability has proven useful for modeling domains with com...
This thesis deals with Statistical Relational Learning (SRL), a research area combining principles a...
Probabilistic Logic Programming extends Logic Programming by enabling the representation of uncertai...
Probabilistic logic programs are logic programs in which some of the facts are annotated with probab...
Probabilistic programming is an emerging subfield of AI that extends traditional programming languag...
Probabilistic logic learning (PLL), sometimes also called statistical relational learning, addresses...
Representing uncertain information is crucial for modeling real world domains. This has been fully r...
In real world domains the information is often uncertain, hence it is of foremost importance to be a...
A multitude of different probabilistic programming languages exists today, all extending a tradition...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...