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The Ethereal
Towards Efficient Verification of Population Protocols
March 13, 2017 ยท The Ethereal ยท ๐ Formal methods in system design
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Authors
Michael Blondin, Javier Esparza, Stefan Jaax, Philipp J. Meyer
arXiv ID
1703.04367
Category
cs.LO: Logic in CS
Cross-listed
cs.DC
Citations
13
Venue
Formal methods in system design
Last Checked
2 months ago
Abstract
Population protocols are a well established model of computation by anonymous, identical finite state agents. A protocol is well-specified if from every initial configuration, all fair executions reach a common consensus. The central verification question for population protocols is the well-specification problem: deciding if a given protocol is well-specified. Esparza et al. have recently shown that this problem is decidable, but with very high complexity: it is at least as hard as the Petri net reachability problem, which is EXPSPACE-hard, and for which only algorithms of non-primitive recursive complexity are currently known. In this paper we introduce the class WS3 of well-specified strongly-silent protocols and we prove that it is suitable for automatic verification. More precisely, we show that WS3 has the same computational power as general well-specified protocols, and captures standard protocols from the literature. Moreover, we show that the membership problem for WS3 reduces to solving boolean combinations of linear constraints over N. This allowed us to develop the first software able to automatically prove well-specification for all of the infinitely many possible inputs.
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