Analysis of Graph Transformation Systems: Native vs Translation-based Techniques
December 20, 2019 Β· Declared Dead Β· π GCM@STAF
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Authors
Reiko Heckel, Leen Lambers, Maryam Ghaffari Saadat
arXiv ID
1912.09607
Category
cs.SE: Software Engineering
Cross-listed
cs.LO
Citations
5
Venue
GCM@STAF
Last Checked
4 months ago
Abstract
The paper summarises the contributions in a session at GCM 2019 presenting and discussing the use of native and translation-based solutions to common analysis problems for Graph Transformation Systems (GTSs). In addition to a comparison of native and translation-based techniques in this area, we explore design choices for the latter, s.a. choice of logic and encoding method, which have a considerable impact on the overall quality and complexity of the analysis. We substantiate our arguments by citing literature on application of theorem provers, model checkers, and SAT/SMT solver in GTSs, and conclude with a general discussion from a software engineering perspective, including comments from the workshop participants, and recommendations on how to investigate important design choices in the future.
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