AbstractIn this paper we show how quantitative program logic (Morgan et al., ACM Trans. Programming Languages Systems 18 (1996) 325) provides a formal framework in which to promote standard techniques of program analysis to a context where probability and nondeterminism interact, a situation common to probabilistic distributed algorithms. We show that overall expected time can be formulated directly in the logic and that it can be derived from local properties of components. We illustrate the methods with an analysis of expected running time of the probabilistic dining philosophers (Lehmann and Ravin, Proc 8th Annu. ACM. Symp. on principles of Programming Languages, ACM, New York, 1981, p. 133)
We introduce a new approach to probabilistic logic programming in which probabilities are defined ov...
A multitude of different probabilistic programming languages exists to-day, all extending a traditio...
Abstract. Two approaches to logic programming with probabilities emerged over time: bayesian reasoni...
AbstractIn this paper we show how quantitative program logic (Morgan et al., ACM Trans. Programming ...
The work is supported by the EPSRC. Abstract. In this paper we show how quantitative program logic [...
Abstract. We provide a HOL formalisation for analysing expected time bounds for probabilistic progra...
We study quantitative reasoning about probabilistic programs. In doing so, we investigate two main a...
This article presents a wp–style calculus for obtaining bounds on the expected runtime of randomized...
The temporal propositional logic of linear time is generalized to an uncertain world, in which rando...
A leading idea is to apply techniques from verification and programming theory to machine learning a...
A multitude of different probabilistic programming languages exists today, all extending a tradition...
Abstract Invited TalkProbabilistic logic programs combine the power of a programming language with a...
Randomization is of paramount importance in practical applications and randomized algorithms are us...
Probabilistic Logic Programming extends Logic Programming by enabling the representation of uncertai...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
We introduce a new approach to probabilistic logic programming in which probabilities are defined ov...
A multitude of different probabilistic programming languages exists to-day, all extending a traditio...
Abstract. Two approaches to logic programming with probabilities emerged over time: bayesian reasoni...
AbstractIn this paper we show how quantitative program logic (Morgan et al., ACM Trans. Programming ...
The work is supported by the EPSRC. Abstract. In this paper we show how quantitative program logic [...
Abstract. We provide a HOL formalisation for analysing expected time bounds for probabilistic progra...
We study quantitative reasoning about probabilistic programs. In doing so, we investigate two main a...
This article presents a wp–style calculus for obtaining bounds on the expected runtime of randomized...
The temporal propositional logic of linear time is generalized to an uncertain world, in which rando...
A leading idea is to apply techniques from verification and programming theory to machine learning a...
A multitude of different probabilistic programming languages exists today, all extending a tradition...
Abstract Invited TalkProbabilistic logic programs combine the power of a programming language with a...
Randomization is of paramount importance in practical applications and randomized algorithms are us...
Probabilistic Logic Programming extends Logic Programming by enabling the representation of uncertai...
Recently, there has been a lot of attention for statistical relational learning and probabilistic pr...
We introduce a new approach to probabilistic logic programming in which probabilities are defined ov...
A multitude of different probabilistic programming languages exists to-day, all extending a traditio...
Abstract. Two approaches to logic programming with probabilities emerged over time: bayesian reasoni...