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Investigating the computational power of spiking neurons with non-standard behaviors

机译:研究具有非标准行为的尖峰神经元的计算能力

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Spiking neural networks have been called the third generation of neural networks. Their main difference with respect to the previous two generations is the use of realistic neuron models. Their computational power has been well studied with respect to threshold gates and sigmoidal neurons. However, biologically realistic models of spiking neurons can produce behaviors that can be computationally relevant, but their power has not been assessed in the same way. This paper studies the computational power of neurons with different behaviors based on the previous analyses conducted by Maass and Schmitt. The studied behaviors are rebound spiking, resonance and bursting. The results of the analysis are presented. A theoretical motivation for this study is presented and a discussion is done on the possible implications of the findings for using networks of spiking neurons for performing computations.
机译:尖峰神经网络被称为第三代神经网络。与前两代相比,它们的主要区别是使用实际的神经元模型。关于阈值门和S形神经元,已经很好地研究了它们的计算能力。但是,尖峰神经元的生物学现实模型可能会产生与计算相关的行为,但其功效尚未以相同的方式进行评估。本文基于Maass和Schmitt先前的分析,研究了具有不同行为的神经元的计算能力。研究的行为是反弹尖峰,共振和爆发。给出了分析结果。提出了这项研究的理论动机,并就发现结果对使用尖峰神经元网络进行计算的可能含义进行了讨论。

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