A review of statistical model checking pitfalls on real-time stochastic models

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Abstract

Statistical model checking (SMC) is a technique inspired by Monte-Carlo simulation for verifying time-bounded temporal logical properties. SMC originally focused on fully stochastic models such as Markov chains, but its scope has recently been extended to cover formalisms that mix functional real-time aspects, concurrency and nondeterminism. We show by various examples using the tools UPPAALSMC and Modes that combining the stochastic interpretation of such models with SMC algorithms is extremely subtle. This may yield significant discrepancies in the analysis results. As these subtleties are not so obvious to the end-user, we present five semantic caveats and give a classification scheme for SMC algorithms. We argue that caution is needed and believe that the caveats and classification scheme in this paper serve as a guiding reference for thoroughly understanding them.

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Bohlender, D., Bruintjes, H., Junges, S., Katelaan, J., Nguyen, V. Y., & Noll, T. (2014). A review of statistical model checking pitfalls on real-time stochastic models. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 8803, pp. 177–192). Springer Verlag. https://doi.org/10.1007/978-3-662-45231-8_13

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