Abstract
AbstractMarkov decision processes are a ubiquitous formalism for modelling systems with non-deterministic and probabilistic behavior. Verification of these models is subject to the famous state space explosion problem. We alleviate this problem by exploiting a hierarchical structure with repetitive parts. This structure not only occurs naturally in robotics, but also in probabilistic programs describing, e.g., network protocols. Such programs often repeatedly call a subroutine with similar behavior. In this paper, we focus on a local case, in which the subroutines have a limited effect on the overall system state. The key ideas to accelerate analysis of such programs are (1) to treat the behavior of the subroutine as uncertain and only remove this uncertainty by a detailed analysis if needed, and (2) to abstract similar subroutines into a parametric template, and then analyse this template. These two ideas are embedded into an abstraction-refinement loop that analyses hierarchical MDPs. A prototypical implementation shows the efficacy of the approach.
Publisher
Springer International Publishing
Reference38 articles.
1. Ábrahám, E., Jansen, N., Wimmer, R., Katoen, J.-P., Becker, B.: DTMC model checking by SCC reduction. In: QEST, pp. 37–46. IEEE CS (2010)
2. Lecture Notes in Computer Science;R Andriushchenko,2021
3. Baier, C., Katoen, J.-P.: Principles of Model Checking. MIT Press, Cambridge (2008)
4. Lecture Notes in Computer Science;C Baier,2017
5. Barry, J.L., Kaelbling, L.P., Lozano-Pérez, T.: DetH*: approximate hierarchical solution of large Markov decision processes. In IJCAI, pp. 1928–1935. IJCAI/AAAI (2011)
Cited by
7 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献