Detailed Information on Publication Record
2021
Computing Bottom SCCs Symbolically Using Transition Guided Reduction
BENEŠ, Nikola, Luboš BRIM, Samuel PASTVA and David ŠAFRÁNEKBasic information
Original name
Computing Bottom SCCs Symbolically Using Transition Guided Reduction
Authors
BENEŠ, Nikola (203 Czech Republic, belonging to the institution), Luboš BRIM (203 Czech Republic, belonging to the institution), Samuel PASTVA (703 Slovakia, belonging to the institution) and David ŠAFRÁNEK (203 Czech Republic, belonging to the institution)
Edition
Neuveden, Computer Aided Verification - 33rd International Conference, CAV 2021, p. 505-528, 24 pp. 2021
Publisher
Springer Nature
Other information
Language
English
Type of outcome
Stať ve sborníku
Field of Study
10201 Computer sciences, information science, bioinformatics
Country of publisher
Switzerland
Confidentiality degree
není předmětem státního či obchodního tajemství
Publication form
electronic version available online
References:
Impact factor
Impact factor: 0.402 in 2005
RIV identification code
RIV/00216224:14330/21:00121980
Organization unit
Faculty of Informatics
ISBN
978-3-030-81684-1
ISSN
UT WoS
000698732400024
Keywords in English
Bottom SCC; Symbolic algorithm; Boolean network
Tags
International impact, Reviewed
Změněno: 11/10/2021 07:52, prof. RNDr. Luboš Brim, CSc.
Abstract
V originále
Detection of bottom strongly connected components (BSCC) in state-transition graphs is an important problem with many applications, such as detecting recurrent states in Markov chains or attractors in dynamical systems. However, these graphs’ size is often entirely out of reach for algorithms using explicit state-space exploration, necessitating alternative approaches such as the symbolic one. Symbolic methods for BSCC detection often show impressive performance, but can sometimes take a long time to converge in large graphs. In this paper, we provide a symbolic state-space reduction method for labelled transition systems, called interleaved transition guided reduction (ITGR), which aims to alleviate current problems of BSCC detection by efficiently identifying large portions of the non-BSCC states. We evaluate the suggested heuristic on an extensive collection of 125 real-world biologically motivated systems. We show that ITGR can easily handle all these models while being either the only method to finish, or providing at least an order-of-magnitude speedup over existing state-of-the-art methods. We then use a set of synthetic benchmarks to demonstrate that the technique also consistently scales to graphs with more than 2^1000 vertices, which was not possible using previous methods.
Links
MUNI/A/1108/2020, interní kód MU |
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MUNI/A/1549/2020, interní kód MU |
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