The standard approach to analyzing the asymptotic complexity of probabilistic programs is based on studying the asymptotic growth of certain expected values (such as the expected termination time) for increasing input size. We argue that this approach is not sufficiently robust, especially in situations when the expectations are infinite. We propose new estimates for the asymptotic analysis of probabilistic programs with non-deterministic choice that overcome this deficiency. Furthermore, we show how to efficiently compute/analyze these estimates for selected classes of programs represented as Markov decision processes over vector addition systems with states
AbstractWe consider models of programs that incorporate probability, dense real-time and data. We pr...
We study quantitative reasoning about probabilistic programs. In doing so, we investigate two main a...
Partially observable Markov decision processes (POMDPs) are standard models for dynamic systems with...
A vector addition system with states (VASS) consists of a finite set of states and counters. A trans...
Vector Addition Systems with States (VASS) provide a well-known and fundamental model for the analys...
We show that for every fixed degree k ? 3, the problem whether the termination/counter complexity of...
A probabilistic vector addition system with states (pVASS) is a finite state Markov process augmente...
version corrigée de quelques scoriesThe study of probabilistic programs is of considerable interest ...
We study the computational complexity of central analysis problems for One-Counter Markov Decision P...
The content of the dissertation falls in the area of formal verification of probabilistic systems. I...
AbstractIn this paper, we consider the fair termination problem for probabilistic concurrent finite-...
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...
A vector addition system with states (VASS) consists of a finite set of states and counters. A confi...
The paper gives a summary of the existing results about algorithmic analysis of probabilistic pushdo...
AbstractWe consider models of programs that incorporate probability, dense real-time and data. We pr...
We study quantitative reasoning about probabilistic programs. In doing so, we investigate two main a...
Partially observable Markov decision processes (POMDPs) are standard models for dynamic systems with...
A vector addition system with states (VASS) consists of a finite set of states and counters. A trans...
Vector Addition Systems with States (VASS) provide a well-known and fundamental model for the analys...
We show that for every fixed degree k ? 3, the problem whether the termination/counter complexity of...
A probabilistic vector addition system with states (pVASS) is a finite state Markov process augmente...
version corrigée de quelques scoriesThe study of probabilistic programs is of considerable interest ...
We study the computational complexity of central analysis problems for One-Counter Markov Decision P...
The content of the dissertation falls in the area of formal verification of probabilistic systems. I...
AbstractIn this paper, we consider the fair termination problem for probabilistic concurrent finite-...
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...
A vector addition system with states (VASS) consists of a finite set of states and counters. A confi...
The paper gives a summary of the existing results about algorithmic analysis of probabilistic pushdo...
AbstractWe consider models of programs that incorporate probability, dense real-time and data. We pr...
We study quantitative reasoning about probabilistic programs. In doing so, we investigate two main a...
Partially observable Markov decision processes (POMDPs) are standard models for dynamic systems with...