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A Root Location Training Method for Polynomial Cellular Neural Networks that Implements Totalistic Cellular Automata

机译:实现完全蜂窝自动机的多项式蜂窝神经网络的根定位训练方法

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The Polynomial Cellular Neural Network (PCNN) is a powerful non-linear processor that is capable of classifying non-linearly separable data points with a single neuron. Despite the capabilities of this model, the determination of the synaptic weights is not a trivial task. In this paper we present the root location training method as an effective, straightforward and high-speed procedure. Such method obtains the synaptic weights of a PCNN that implements any totalistic cellular automata behavior, dispensing the usage of heuristic methods such as genetic algorithms or numerical approaches such as quadratic programming procedures.
机译:多项式蜂窝神经网络(PCNN)是一种强大的非线性处理器,能够用单个神经元对非线性可分离的数据点进行分类。尽管该模型的能力,但突触权重的确定不是琐碎的任务。在本文中,我们将根部定位训练方法呈现为有效,直接和高速的过程。这种方法获得实现任何完全蜂窝自动机行为的PCNN的突触权重,分配了启发式方法的使用,例如遗传算法或数值方法,例如二次编程过程。

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