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Counting Boolean networks are universal approximators

机译:计数布尔网络是通用近似器

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A Boolean neural model is presented, where fuzzy reasoning emerges as a macroscopic property from individual neuron Boolean counting operations and random inter-neuron connections. The main objective of this work is to demonstrate that such networks are Universal Approximators. This is achieved through well known properties of non parametric techniques (Parzen Window estimators) to estimate any probability density function.
机译:提出了一种布尔神经模型,其中模糊推理作为来自个体神经元布尔计数操作和随机间神经元连接的宏观性质。这项工作的主要目标是证明这种网络是普遍的近似器。这是通过众所周知的非参数化技术(PARZEN窗口估计器)的特性来实现的,以估计任何概率密度函数。

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