We enable aProbLog—a probabilistic logical programming approach—to reason in presence of uncertain probabilities represented as Beta-distributed random variables. We achieve the same performance of state-of-the-art algorithms for highly specified and engineered domains, while simultaneously we maintain the flexibility offered by aProbLog in handling complex relational domains. Our motivation is that faithfully capturing the distribution of probabilities is necessary to compute an expected utility for effective decision making under uncertainty: unfortunately, these probability distributions can be highly uncertain due to sparse data. To understand and accurately manipulate such probability distributions we need a well-defined theoretical fr...
Recently much work in Machine Learning has concentrated on using expressive representation languages...
Today, many different probabilistic programming languages exist and even more inference mechanisms f...
Recently much work in Machine Learning has concentrated on using expressive representation languages...
We enable aProbLog-a probabilistic logical programming approach-to reason in presence of uncertain p...
The combination of logic programming and probability has proven useful for modeling domains with com...
Probabilistic Logic Programming extends Logic Programming by enabling the representation of uncertai...
An issue that has so far received only limited attention in probabilistic logic programming (PLP) is...
An important issue in artificial intelligence and many other fields is modeling the domain of intere...
Probabilistic logic programs [4] combine the power of a pro- gramming language with a possible world...
Abstract Probabilistic logics combine the expressive power of logic with the ability to reason with ...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
Abstract Invited TalkProbabilistic logic programs combine the power of a programming language with a...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
Probabilistic logic programming is an effective formalism for encoding problems characterized by unc...
Recently much work in Machine Learning has concentrated on using expressive representation languages...
Today, many different probabilistic programming languages exist and even more inference mechanisms f...
Recently much work in Machine Learning has concentrated on using expressive representation languages...
We enable aProbLog-a probabilistic logical programming approach-to reason in presence of uncertain p...
The combination of logic programming and probability has proven useful for modeling domains with com...
Probabilistic Logic Programming extends Logic Programming by enabling the representation of uncertai...
An issue that has so far received only limited attention in probabilistic logic programming (PLP) is...
An important issue in artificial intelligence and many other fields is modeling the domain of intere...
Probabilistic logic programs [4] combine the power of a pro- gramming language with a possible world...
Abstract Probabilistic logics combine the expressive power of logic with the ability to reason with ...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
Abstract Invited TalkProbabilistic logic programs combine the power of a programming language with a...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
Probabilistic logic programming is an effective formalism for encoding problems characterized by unc...
Recently much work in Machine Learning has concentrated on using expressive representation languages...
Today, many different probabilistic programming languages exist and even more inference mechanisms f...
Recently much work in Machine Learning has concentrated on using expressive representation languages...