A Fast Neural Network Simulator for State Transition Analysis

نویسندگان

  • Atsushi KAMO
  • Hiroshi NINOMIYA
  • Teru YONEYAMA
  • Hideki ASAI
چکیده

This paper describes an efficient simulator for state transition analysis of multivalued continuous-time neural networks, where the multivalued transfer function of neuron is regarded as a stepwise constant one. Use of stepwise constant method enables to analyse the state transition of the network without solving explicitly the differential equations. This method also enables to select the optimal timestep in numerical integration. The proposed method is implemented on the simulator and applied to the general neural network analysis. Furthermore, this is compared with the conventional simulators. Finally, it is shown that our simulator is drastically faster and more practical than the conventional simulators. key words: stepwise constant method, multivalued neural network, ASSIST, state transition analysis

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تاریخ انتشار 1999