We study the almost-sure termination problem for probabilistic programs. First, we show that supermartingales with lower bounds on conditional absolute difference provide a sound approach for the almost-sure termination problem. Moreover, using this approach we can obtain explicit optimal bounds on tail probabilities of non-termination within a given number of steps. Second, we present a new approach based on Central Limit Theorem for the almost-sure termination problem, and show that this approach can establish almost-sure termination of programs which none of the existing approaches can handle. Finally, we discuss algorithmic approaches for the two above methods that lead to automated analysis techniques for almost-sure termination of pro...
We study termination of higher-order probabilistic functional programs with recursion, stochastic co...
Termination analysis has received considerable attention in Logic Programming for several decades. I...
We study quantitative reasoning about probabilistic programs. In doing so, we investigate two main a...
We consider the almost-sure (a.s.) termination problem for probabilistic programs, which are a stoch...
Termination is one of the basic liveness properties, and we study the termination problem for probab...
We present a new proof rule for proving almost-sure termination of probabilistic programs, including...
International audienceWe consider the quantitative problem of obtaining lower-bounds on the probabil...
In this work, we consider the almost-sure termination problem for probabilistic programs that asks w...
Probabilistic programs extend classical imperative programs with real-valued random variables and ra...
In this article, we consider the termination problem of probabilistic programs with real-valued vari...
In this paper, we consider termination of probabilistic programs with real-valued variables. The que...
An important question for a probabilistic program is whether the probability mass of all its divergi...
International audienceIn this work, we consider the almost-sure termination problem for probabilisti...
AbstractIn this note we show that probabilistic termination of concurrent programs is in many cases ...
We present the first machine learning approach to the termination analysis of probabilistic programs...
We study termination of higher-order probabilistic functional programs with recursion, stochastic co...
Termination analysis has received considerable attention in Logic Programming for several decades. I...
We study quantitative reasoning about probabilistic programs. In doing so, we investigate two main a...
We consider the almost-sure (a.s.) termination problem for probabilistic programs, which are a stoch...
Termination is one of the basic liveness properties, and we study the termination problem for probab...
We present a new proof rule for proving almost-sure termination of probabilistic programs, including...
International audienceWe consider the quantitative problem of obtaining lower-bounds on the probabil...
In this work, we consider the almost-sure termination problem for probabilistic programs that asks w...
Probabilistic programs extend classical imperative programs with real-valued random variables and ra...
In this article, we consider the termination problem of probabilistic programs with real-valued vari...
In this paper, we consider termination of probabilistic programs with real-valued variables. The que...
An important question for a probabilistic program is whether the probability mass of all its divergi...
International audienceIn this work, we consider the almost-sure termination problem for probabilisti...
AbstractIn this note we show that probabilistic termination of concurrent programs is in many cases ...
We present the first machine learning approach to the termination analysis of probabilistic programs...
We study termination of higher-order probabilistic functional programs with recursion, stochastic co...
Termination analysis has received considerable attention in Logic Programming for several decades. I...
We study quantitative reasoning about probabilistic programs. In doing so, we investigate two main a...