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首页> 外文期刊>Physics Letters, A >Noise-robust realization of Turing-complete cellular automata by using neural networks with pattern representation
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Noise-robust realization of Turing-complete cellular automata by using neural networks with pattern representation

机译:带有模式表示的神经网络在图灵完备细胞自动机上的鲁棒性实现

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摘要

A modularly-structured neural network model is considered. Each module, which we call a 'cell', consists of two parts: a Hopfield neural network model and a multilayered perceptron. An array of such cells is used to simulate the Rule 110 cellular automaton with high accuracy even when all the units of neural networks are replaced by stochastic binary ones. We also find that noise not only degrades but also facilitates computation if the outputs of multilayered perceptrons are below the threshold required to update the states of the cells, which is a stochastic resonance in computation.
机译:考虑了模块化结构的神经网络模型。每个模块,我们称为“细胞”,由两部分组成:一个Hopfield神经网络模型和一个多层感知器。即使将神经网络的所有单元替换为随机的二进制单元,也可以使用此类单元的阵列来高精度模拟Rule 110细胞自动机。我们还发现,如果多层感知器的输出低于更新单元状态所需的阈值,则噪声不仅会降低性能,而且还会促进计算,这是计算中的随机共振。

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