2012
DOI: 10.4204/eptcs.96.6
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Learn with SAT to Minimize Büchi Automata

Abstract: We describe a minimization procedure for nondeterministic Büchi automata (NBA). For an automaton A another automaton A_min with the minimal number of states is learned with the help of a SAT-solver. This is done by successively computing automata A' that approximate A in the sense that they accept a given finite set of positive examples and reject a given finite set of negative examples. In the course of the procedure these example sets are successively increased. Thus, our method can be seen as an instance of… Show more

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“…We failed to minimize automata whose minimal automaton needs more than 10 states in reasonable time [1].…”
Section: State Of the Art In Minimizing Automatamentioning
confidence: 99%
“…We failed to minimize automata whose minimal automaton needs more than 10 states in reasonable time [1].…”
Section: State Of the Art In Minimizing Automatamentioning
confidence: 99%