Learning algorithms for verification of Markov decision processes

Brázdil T, Chatterjee K, Chmelik M, Forejt V, Kretinsky J, Kwiatkowska M, Meggendorfer T, Parker D, Ujma M. 2025. Learning algorithms for verification of Markov decision processes. TheoretiCS. 4, 10.

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Journal Article | Published | English

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Author
Brázdil, Tomáš; Chatterjee, KrishnenduISTA ; Chmelik, MartinISTA; Forejt, Vojtěch; Kretinsky, JanISTA ; Kwiatkowska, Marta; Meggendorfer, TobiasISTA ; Parker, David; Ujma, Mateusz
Department
Abstract
We present a general framework for applying learning algorithms and heuristical guidance to the verification of Markov decision processes (MDPs). The primary goal of our techniques is to improve performance by avoiding an exhaustive exploration of the state space, instead focussing on particularly relevant areas of the system, guided by heuristics. Our work builds on the previous results of Br{á}zdil et al., significantly extending it as well as refining several details and fixing errors. The presented framework focuses on probabilistic reachability, which is a core problem in verification, and is instantiated in two distinct scenarios. The first assumes that full knowledge of the MDP is available, in particular precise transition probabilities. It performs a heuristic-driven partial exploration of the model, yielding precise lower and upper bounds on the required probability. The second tackles the case where we may only sample the MDP without knowing the exact transition dynamics. Here, we obtain probabilistic guarantees, again in terms of both the lower and upper bounds, which provides efficient stopping criteria for the approximation. In particular, the latter is an extension of statistical model-checking (SMC) for unbounded properties in MDPs. In contrast to other related approaches, we do not restrict our attention to time-bounded (finite-horizon) or discounted properties, nor assume any particular structural properties of the MDP.
Publishing Year
Date Published
2025-04-01
Journal Title
TheoretiCS
Publisher
TheoretiCS Foundation
Acknowledgement
This research was funded in part by the European Research Council (ERC) under grant agreement AdG-267989 (QUAREM)*, AdG-246967 (VERIWARE)*, StG-279307 (Graph Games)* , CoG-863818 (ForM-SMArt), and AdG-834115 (FUN2MODEL), by the EU FP7 project HIERATIC*, by the German Research Foundation (DFG) project 427755713 (GOPro), by the Austrian Science Fund (FWF) projects S11402-N23 (RiSE)* , S11407-N23 (RiSE)* , and P23499-N23* , by the Czech Science Foundation grant No P202/12/P612* and GA23-06963S, by the MUNI Award in Science and Humanities (MUNI/I/1757/2021) of the Grant Agency of Masaryk University, by EPSRC project EP/K038575/1*, and by the Microsoft faculty fellows award*. A preliminary version of this article appeared at ATVA 2014 [33]. The * indicates funding that supported that version.
Volume
4
Article Number
10
eISSN
IST-REx-ID

Cite this

Brázdil T, Chatterjee K, Chmelik M, et al. Learning algorithms for verification of Markov decision processes. TheoretiCS. 2025;4. doi:10.46298/theoretics.25.10
Brázdil, T., Chatterjee, K., Chmelik, M., Forejt, V., Kretinsky, J., Kwiatkowska, M., … Ujma, M. (2025). Learning algorithms for verification of Markov decision processes. TheoretiCS. TheoretiCS Foundation. https://doi.org/10.46298/theoretics.25.10
Brázdil, Tomáš, Krishnendu Chatterjee, Martin Chmelik, Vojtěch Forejt, Jan Kretinsky, Marta Kwiatkowska, Tobias Meggendorfer, David Parker, and Mateusz Ujma. “Learning Algorithms for Verification of Markov Decision Processes.” TheoretiCS. TheoretiCS Foundation, 2025. https://doi.org/10.46298/theoretics.25.10.
T. Brázdil et al., “Learning algorithms for verification of Markov decision processes,” TheoretiCS, vol. 4. TheoretiCS Foundation, 2025.
Brázdil T, Chatterjee K, Chmelik M, Forejt V, Kretinsky J, Kwiatkowska M, Meggendorfer T, Parker D, Ujma M. 2025. Learning algorithms for verification of Markov decision processes. TheoretiCS. 4, 10.
Brázdil, Tomáš, et al. “Learning Algorithms for Verification of Markov Decision Processes.” TheoretiCS, vol. 4, 10, TheoretiCS Foundation, 2025, doi:10.46298/theoretics.25.10.
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