Abstract
SLIM is an LMNtal runtime. LMNtal is a programming and modeling language based on hierarchical graph rewriting. SLIM features automata-based LTL model checking that is one of the methods to solve accepting cycle search problems. Parallel search algorithms OWCTY and MAP used by SLIM generate a large number of states for problems having and accepting cycles. Moreover, they have a problem that performance seriously falls for particular problems. We propose a new algorithm that combines MAP and Nested DFS to remove states for problems including accepting cycles. We experimented the algorithm and confirmed improvements both in performance and scalability. © The Japanese Society for Artificial Intelligence 2014.
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CITATION STYLE
Yasuda, R., Yoshida, T., & Ueda, K. (2014). Reduction of the number of states and the acceleration of LMNtal parallel model checking. Transactions of the Japanese Society for Artificial Intelligence, 29(1), 182–187. https://doi.org/10.1527/tjsai.29.182
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