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Learning of Simple Dynamic Binary Neural Networks

机译:简单动态二进制神经网络的学习

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This paper studies the simple dynamic binary neural network characterized by the signum activation function, ternary weighting parameters and integer threshold parameters. The network can be regarded as a digital version of the recurrent neural network and can output a variety of binary periodic orbits. The network dynamics can be simplified into a return map, from a set of lattice points, to itself. In order to store a desired periodic orbit, we present two learning algorithms based on the correlation learning and the genetic algorithm. The algorithms are applied to three examples: a periodic orbit corresponding to the switching signal of the dc-ac inverter and artificial periodic orbit. Using the return map, we have investigated the storage of the periodic orbits and stability of the stored periodic orbits.
机译:本文研究了以信号激活函数,三元加权参数和整数阈值参数为特征的简单动态二进制神经网络。该网络可以看作是递归神经网络的数字版本,可以输出各种二进制周期轨道。网络动力学可以简化为从一组晶格点到其自身的返回映射。为了存储所需的周期性轨道,我们提出了两种基于相关学习和遗传算法的学习算法。该算法适用于三个示例:对应于dc-ac逆变器的开关信号的周期性轨道和人工周期性轨道。使用返回图,我们研究了周期轨道的存储和所存储周期轨道的稳定性。

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