
arXiv: 1608.00657
This paper concerns branching simulation for weighted Kripke structures with parametric weights. Concretely, we consider a weighted extension of branching simulation where a single transitions can be matched by a sequence of transitions while preserving the branching behavior. We relax this notion to allow for a small degree of deviation in the matching of weights, inducing a directed distance on states. The distance between two states can be used directly to relate properties of the states within a sub-fragment of weighted CTL. The problem of relating systems thus changes to minimizing the distance which, in the general parametric case, corresponds to finding suitable parameter valuations such that one system can approximately simulate another. Although the distance considers a potentially infinite set of transition sequences we demonstrate that there exists an upper bound on the length of relevant sequences, thereby establishing the computability of the distance.
In Proceedings Cassting'16/SynCoP'16, arXiv:1608.00177
FOS: Computer and information sciences, Computer Science - Logic in Computer Science, branching simulation, QA75.5-76.95, simulation distance, Logic in Computer Science (cs.LO), parametric weighted kripke structure, Electronic computers. Computer science, QA1-939, Mathematics
FOS: Computer and information sciences, Computer Science - Logic in Computer Science, branching simulation, QA75.5-76.95, simulation distance, Logic in Computer Science (cs.LO), parametric weighted kripke structure, Electronic computers. Computer science, QA1-939, Mathematics
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