One of the main challenges in the analysis of probabilistic programs is to compute invariant properties that summarise loop behaviours. Automation of invariant generation is still at its infancy and most of the times targets only expected values of the program variables, which is insufficient to recover the full probabilistic program behaviour. We present a method to automatically generate moment-based invariants of a subclass of probabilistic programs, called Prob-solvable loops, with polynomial assignments over random variables and parametrised distributions. We combine methods from symbolic summation and statistics to derive invariants as valid properties over higher-order moments, such as expected values or variances, of program variabl...
Back and von Wright have developed algebraic laws for reasoning about loops in the refinement calcul...
We show that computing the strongest polynomial invariant for single-path loops with polynomial assi...
Back and von Wright have developed algebraic laws for reasoning about loops in a total correctness f...
We present a novel static analysis technique to derive higher moments for program variables for a la...
We present a method to automatically approximate moment-based invariants of probabilistic programs w...
We present static analyses for probabilistic loops using expectation invariants. Probabilistic loops...
We present an exact approach to analyze and quantify the sensitivity of higher moments of probabilis...
Prinsys (pronounced "princess") is a new software-tool for probabilistic invariant synthesis. In thi...
In this thesis we consider sequential probabilistic programs. Such programsare a means to model rand...
Morgan and McIver's weakest pre-expectation framework is one of the most well-established methods fo...
This paper investigates the usage of generating functions (GFs) encoding measures over the program v...
Abstract. By combining algorithmic learning, decision procedures, and predicate abstraction, we pres...
Automatically generating invariants, key to computer-aided analysis of probabilistic and determinist...
International audienceBy combining algorithmic learning, decision procedures, and predicate abstract...
Back and von Wright have developed algebraic laws for reasoning about loops in the refinement calcul...
Back and von Wright have developed algebraic laws for reasoning about loops in the refinement calcul...
We show that computing the strongest polynomial invariant for single-path loops with polynomial assi...
Back and von Wright have developed algebraic laws for reasoning about loops in a total correctness f...
We present a novel static analysis technique to derive higher moments for program variables for a la...
We present a method to automatically approximate moment-based invariants of probabilistic programs w...
We present static analyses for probabilistic loops using expectation invariants. Probabilistic loops...
We present an exact approach to analyze and quantify the sensitivity of higher moments of probabilis...
Prinsys (pronounced "princess") is a new software-tool for probabilistic invariant synthesis. In thi...
In this thesis we consider sequential probabilistic programs. Such programsare a means to model rand...
Morgan and McIver's weakest pre-expectation framework is one of the most well-established methods fo...
This paper investigates the usage of generating functions (GFs) encoding measures over the program v...
Abstract. By combining algorithmic learning, decision procedures, and predicate abstraction, we pres...
Automatically generating invariants, key to computer-aided analysis of probabilistic and determinist...
International audienceBy combining algorithmic learning, decision procedures, and predicate abstract...
Back and von Wright have developed algebraic laws for reasoning about loops in the refinement calcul...
Back and von Wright have developed algebraic laws for reasoning about loops in the refinement calcul...
We show that computing the strongest polynomial invariant for single-path loops with polynomial assi...
Back and von Wright have developed algebraic laws for reasoning about loops in a total correctness f...