Strong, Weak and Branching Bisimulation for Transition Systems and Markov Reward Chains: A Unifying Matrix Approach

Nikola Trčka
(Eindhoven University of Technology)

We first study labeled transition systems with explicit successful termination. We establish the notions of strong, weak, and branching bisimulation in terms of boolean matrix theory, introducing thus a novel and powerful algebraic apparatus. Next we consider Markov reward chains which are standardly presented in real matrix theory. By interpreting the obtained matrix conditions for bisimulations in this setting, we automatically obtain the definitions of strong, weak, and branching bisimulation for Markov reward chains. The obtained strong and weak bisimulations are shown to coincide with some existing notions, while the obtained branching bisimulation is new, but its usefulness is questionable.

In Suzana Andova, Annabelle McIver, Pedro D'Argenio, Pieter Cuijpers, Jasen Markovski, Caroll Morgan and Manuel Núñez: Proceedings First Workshop on Quantitative Formal Methods: Theory and Applications (QFM 2009), Eindhoven, The Netherlands, 3rd November 2009, Electronic Proceedings in Theoretical Computer Science 13, pp. 55–65.
Published: 10th December 2009.

ArXived at: https://dx.doi.org/10.4204/EPTCS.13.5 bibtex PDF

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