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A Novel Single Neuron Perceptron with Universal Approximation and XOR Computation Properties

机译:具有通用逼近和XOR计算特性的新型单神经元感知器

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摘要

We propose a biologically motivated brain-inspired single neuron perceptron (SNP) with universal approximation and XOR computation properties. This computational model extends the input pattern and is based on the excitatory and inhibitory learning rules inspired from neural connections in the human brain's nervous system. The resulting architecture of SNP can be trained by supervised excitatory and inhibitory online learning rules. The main features of proposed single layer perceptron are universal approximation property and low computational complexity. The method is tested on 6 UCI (University of California, Irvine) pattern recognition and classification datasets. Various comparisons with multilayer perceptron (MLP) with gradient decent backpropagation (GDBP) learning algorithm indicate the superiority of the approach in terms of higher accuracy, lower time, and spatial complexity, as well as faster training. Hence, we believe the proposed approach can be generally applicable to various problems such as in pattern recognition and classification.
机译:我们提出具有通用逼近和XOR计算属性的生物动机的大脑启发性单神经元感知器(SNP)。这种计算模型扩展了输入模式,并且基于从人脑神经系统中的神经连接启发而来的兴奋性和抑制性学习规则。可以通过监督的兴奋性和抑制性在线学习规则来训练生成的SNP架构。提出的单层感知器的主要特征是通用逼近性质和低计算复杂度。该方法在6个UCI(加利福尼亚大学欧文分校)模式识别和分类数据集中进行了测试。多层感知器(MLP)与梯度体面反向传播(GDBP)学习算法的各种比较表明,该方法在更高的准确性,更少的时间和空间复杂性以及更快的训练方面具有优势。因此,我们相信所提出的方法可以普遍适用于各种问题,例如模式识别和分类。

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