Publication detail

Adaptive formal approximations of Markov chains

ANDRIUSHCHENKO, R. ČEŠKA, M. ABATE, A. KWIATKOWSKA, M.

Original Title

Adaptive formal approximations of Markov chains

Type

journal article in Web of Science

Language

English

Original Abstract

We explore formal approximation techniques for Markov chains based on state-space reduction that aim at improving the scalability of the analysis, while providing formal bounds on the approximation error. We first present a comprehensive survey of existing state-reduction techniques based on clustering or truncation. Then, we extend existing frameworks for aggregation-based analysis of Markov chains by allowing them to handle chains with an arbitrary structure of the underlying state space - including continuous-time models - and improve upon existing bounds on the approximation error. Finally, we introduce a new hybrid scheme that utilises both aggregation and truncation of the state space and provides the best available approach for approximating continuous-time models. We conclude with a broad and detailed comparative evaluation of existing and new approximation techniques and investigate how different methods handle various Markov models. The results also show that the introduced hybrid scheme significantly outperforms existing approaches and provides a speedup of the analysis up to a factor of 30 with the corresponding approximation error bounded within 0.1%.

Keywords

Markov models,  Probabilistic model checking,  Approximation techniques,  Adaptive aggregation

Authors

ANDRIUSHCHENKO, R.; ČEŠKA, M.; ABATE, A.; KWIATKOWSKA, M.

Released

10. 5. 2021

ISBN

0166-5316

Periodical

PERFORMANCE EVALUATION

Year of study

148

Number

102207

State

Kingdom of the Netherlands

Pages from

1

Pages to

23

Pages count

23

URL

BibTex

@article{BUT171485,
  author="Roman {Andriushchenko} and Milan {Češka} and Alessandro {Abate} and Marta {Kwiatkowska}",
  title="Adaptive formal approximations of Markov chains",
  journal="PERFORMANCE EVALUATION",
  year="2021",
  volume="148",
  number="102207",
  pages="1--23",
  doi="10.1016/j.peva.2021.102207",
  issn="0166-5316",
  url="https://www.sciencedirect.com/science/article/pii/S0166531621000249"
}