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{"references": ["Gros, T.P., Hermanns, H., Hoffmann, J., Klauck, M., Steinmetz, M.: Deep Statistical Model Checking. In: Proceedings of the 40th International Conference on Formal Techniques for Distributed Objects, Components, and Systems (FORTE'20) (2020), available at https://doi.org/10.1007/978-3-030-50086-3_6."]}
This repository contains the models and all other infrastructure (learning procedure, NNs, Jani generator, maps, modes & mcsta binaries) used in the FORTE 2020 paper "Deep Statistical Model Checking".
model checking, learning, statistical model checking, deep statistical model checking, reinforcement learning, racetrack
model checking, learning, statistical model checking, deep statistical model checking, reinforcement learning, racetrack
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