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Multistability of delayed complex-valued recurrent neural networks with discontinuous real-imaginarytype activation functions

Multistability of delayed complex-valued recurrent neural networks with discontinuous real-imaginarytype activation functions
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摘要 In this paper, the multistability issue is discussed for delayed complex-valued recurrent neural networks with discontinuous real-imaginary-type activation functions. Based on a fixed theorem and stability definition, sufficient criteria are established for the existence and stability of multiple equilibria of complex-valued recurrent neural networks. The number of stable equilibria is larger than that of real-valued recurrent neural networks, which can be used to achieve high-capacity associative memories. One numerical example is provided to show the effectiveness and superiority of the presented results. In this paper, the multistability issue is discussed for delayed complex-valued recurrent neural networks with discontinuous real-imaginary-type activation functions. Based on a fixed theorem and stability definition, sufficient criteria are established for the existence and stability of multiple equilibria of complex-valued recurrent neural networks. The number of stable equilibria is larger than that of real-valued recurrent neural networks, which can be used to achieve high-capacity associative memories. One numerical example is provided to show the effectiveness and superiority of the presented results.
出处 《Chinese Physics B》 SCIE EI CAS CSCD 2015年第12期271-279,共9页 中国物理B(英文版)
基金 Project supported by the National Natural Science Foundation of China(Grant Nos.61374094 and 61503338) the Natural Science Foundation of Zhejiang Province,China(Grant No.LQ15F030005)
关键词 complex-valued recurrent neural network discontinuous real-imaginary-type activation function multistability delay complex-valued recurrent neural network,discontinuous real-imaginary-type activation function,multistability,delay
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