English

Robust Model Checking with Imprecise Markov Reward Models

Logic in Computer Science 2021-05-19 v2 Logic Probability

Abstract

In recent years probabilistic model checking has become an important area of research because of the diffusion of computational systems of stochastic nature. Despite its great success, standard probabilistic model checking suffers the limitation of requiring a sharp specification of the probabilities governing the model behaviour. The theory of imprecise probabilities offers a natural approach to overcome such limitation by a sensitivity analysis with respect to the values of these parameters. However, only extensions based on discrete-time imprecise Markov chains have been considered so far for such a robust approach to model checking. We present a further extension based on imprecise Markov reward models. In particular, we derive efficient algorithms to compute lower and upper bounds of the expected cumulative reward and probabilistic bounded rewards based on existing results for imprecise Markov chains. These ideas are tested on a real case study involving the spend-down costs of geriatric medicine departments.

Keywords

Cite

@article{arxiv.2103.04841,
  title  = {Robust Model Checking with Imprecise Markov Reward Models},
  author = {Alberto Termine and Alessandro Antonucci and Alessandro Facchini and Giuseppe Primiero},
  journal= {arXiv preprint arXiv:2103.04841},
  year   = {2021}
}

Comments

Forthcoming in the proceedings of ISIPTA 2021 (International Symposium of Imprecise Probability: Theory and Applications)