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Multiplex Communication with Synchronous Shift and Weight Learning in 2D Mesh Neural Network

机译:二维网状神经网络中具有同步移位和权重学习的多工通信

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We have previously proposed a multiplex communication system in a neural network. However, this system is designed to force the network to communicate in a multiplexed manner, in which "codes" or "temporal sequences" are inevitably induced. This means that the network has a main loop and coding/decoding circuits, which are somewhat artificial. In this paper, we show that it is also possible to communicate without these artificial guidance aids by multiplexing in a 2D mesh-type neural network, where learning procedures are used to find paths from an originating neuron to a destination neuron. We also provide statistics from these neural networks to show that random sequences occur more frequently than non-random sequences.
机译:我们先前已经提出了神经网络中的多重通信系统。然而,该系统被设计为迫使网络以多路复用的方式进行通信,其中不可避免地引起“代码”或“时间序列”。这意味着网络具有主回路和编码/解码电路,这在某种程度上是人为的。在本文中,我们表明,通过在2D网格型神经网络中进行复用,也可以在没有这些人工指导辅助的情况下进行通信,其中使用学习过程来查找从始发神经元到目的神经元的路径。我们还提供了来自这些神经网络的统计数据,以显示随机序列比非随机序列发生的频率更高。

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