2 research outputs found
Approximating Markovian Testing Equivalence
Several approaches have been proposed to relax behavioral equivalences for fine-grain
models including probabilities and time. All of them face two problems behind the notion
of approximation, i.e., the lack of transitivity and the efficiency of the verification algorithm.
While the typical equivalence under approximation is bisimulation,wepresent a relaxation
of Markovian testing equivalence in a process algebraic framework. In this coarser setting,
we show that it is particularly intuitive to manage separately three different dimensions
of the approximation – execution time, event probability, and observed behavior – by
illustrating in each case, results concerning the two problems mentioned above. Finally,
a unified definition combining the three orthogonal aspects is provided in order to favor
trade-off analyses