Publication | Closed Access
Identification of Finite State Automata With a Class of Recurrent Neural Networks
20
Citations
34
References
2010
Year
EngineeringMachine LearningComputer EngineeringRecurrent Neural NetworksSystems EngineeringAutomaton OperationPushdown AutomatonAutomaton NetworkComputer ScienceFinite State AutomataFinite-state SystemSystem IdentificationRecurrent Neural NetworkHybrid Greedy
A class of recurrent neural networks is proposed and proven to be capable of identifying any discrete-time dynamical system. The application of the proposed network is addressed in the encoding, identification, and extraction of finite state automata (FSAs). Simulation results show that the identification of FSAs using the proposed network, trained by the hybrid greedy simulated annealing with a modified cost function in the training stage, generally exhibits better performance than the conventional identification procedures.
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