State space lumping is one of the classical means to fight the state space explosion problem in state-based performance evaluation and verification. Particularly when numerical algorithms are applied to analyze a Markov model, one often observes that those algorithms do not scale beyond systems of moderate size. To alleviate this problem, symbolic lumping algorithms have been devised to effectively reduce very large – but symbolically represented – Markov models to moderate size explicit representations. This lumping step partitions the Markov model in such a way that any numerical analysis carried out on the lumped model is guaranteed to produce exact results for the original system. But even this lumping preprocessing may fail due to time...
We deal with the lumpability approach to cope with the state space explosion problem inherent to the...
State-space exploration is an essential step in many modeling and analysis problems. Its goal is to ...
Quantitative analysis of computer systems is often based on Markovian models. Among the formalisms t...
158 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2005.In particular, we have develo...
In recent years, disk-based approaches to the analysis of Markov models have proved to be an effecti...
AbstractThe complexity of stochastic models of real-world systems is usually managed by abstracting ...
Continuous time Markov chains (CTMCs) are among the most fundamental mathematical structures used fo...
AbstractDespite considerable effort, the state-space explosion problem remains an issue in the analy...
In this paper we reason about the notion of proportional lumpability, that generalizes the original ...
Computer systems are ubiquitous in almost all spheres of our life, motivat-ing the need for them to ...
We present a faster symbolic algorithm for the following central problem in probabilistic verificati...
Bisimulation minimisation alleviates the exponential growth of transition systems in model checking ...
State space based performance analysis of stochastic models may be impaired by the state space explo...
We introduce parallel symbolic algorithms for bisimulation minimisation, to combat the combinatorial...
State space based performance analysis of stochastic models may be impaired by the state space explo...
We deal with the lumpability approach to cope with the state space explosion problem inherent to the...
State-space exploration is an essential step in many modeling and analysis problems. Its goal is to ...
Quantitative analysis of computer systems is often based on Markovian models. Among the formalisms t...
158 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2005.In particular, we have develo...
In recent years, disk-based approaches to the analysis of Markov models have proved to be an effecti...
AbstractThe complexity of stochastic models of real-world systems is usually managed by abstracting ...
Continuous time Markov chains (CTMCs) are among the most fundamental mathematical structures used fo...
AbstractDespite considerable effort, the state-space explosion problem remains an issue in the analy...
In this paper we reason about the notion of proportional lumpability, that generalizes the original ...
Computer systems are ubiquitous in almost all spheres of our life, motivat-ing the need for them to ...
We present a faster symbolic algorithm for the following central problem in probabilistic verificati...
Bisimulation minimisation alleviates the exponential growth of transition systems in model checking ...
State space based performance analysis of stochastic models may be impaired by the state space explo...
We introduce parallel symbolic algorithms for bisimulation minimisation, to combat the combinatorial...
State space based performance analysis of stochastic models may be impaired by the state space explo...
We deal with the lumpability approach to cope with the state space explosion problem inherent to the...
State-space exploration is an essential step in many modeling and analysis problems. Its goal is to ...
Quantitative analysis of computer systems is often based on Markovian models. Among the formalisms t...