2013 12th International Conference on Machine Learning and Applications 2013
DOI: 10.1109/icmla.2013.111
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Learning Finite-State Machines: Conserving Fitness Function Evaluations by Marking Used Transitions

Abstract: This paper is dedicated to the problem of learning finite-state machines (FSMs), which plays a key role in automatabased programming. Metaheuristic algorithms commonly applied to this problem often use FSM mutations (small changes in the FSM structure) for solution construction. Most of them do not employ the specifics of FSMs in their work. We propose a new simple method for improving performance of these algorithms. The basic idea is to mark those transitions of FSMs that were used during fitness evaluation.… Show more

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