On the Robustness of Temporal Properties for Stochastic Models
Ezio Bartocci (TU Wien, Austria), Luca Bortolussi (University of, Trieste, Italy), Laura Nenzi (IMT Lucca, Italy), Guido Sanguinetti, (University of Edinburgh, UK)

TL;DR
This paper extends the concept of robustness from deterministic to stochastic models, enabling the analysis of how likely a system is to maintain desired behaviors despite perturbations, and proposes methods to optimize control parameters for robustness.
Contribution
It introduces a novel extension of robustness measures to stochastic systems and combines these with satisfaction probabilities for system design optimization.
Findings
Distribution of robustness scores can be approximated for stochastic models.
Average and conditional robustness indicators are useful for analysis.
Method for optimizing control parameters to maximize robustness.
Abstract
Stochastic models such as Continuous-Time Markov Chains (CTMC) and Stochastic Hybrid Automata (SHA) are powerful formalisms to model and to reason about the dynamics of biological systems, due to their ability to capture the stochasticity inherent in biological processes. A classical question in formal modelling with clear relevance to biological modelling is the model checking problem. i.e. calculate the probability that a behaviour, expressed for instance in terms of a certain temporal logic formula, may occur in a given stochastic process. However, one may not only be interested in the notion of satisfiability, but also in the capacity of a system to mantain a particular emergent behaviour unaffected by the perturbations, caused e.g. from extrinsic noise, or by possible small changes in the model parameters. To address this issue, researchers from the verification community have…
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