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A Single Neuron Model for Pattern Classification

机译:用于模式分类的单个神经元模型

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A biologically realistic non linear integrate and fire model is proposed in this paper. Its complete solution is derived and used for the construction of aggregation function in Multi layer perceptron model for classification of UCI Machine learning datasets. It is found that a single neuron in the conventional neural network is sufficient for the classification datasets. It has been observed that the proposed neuron model is far superior in terms of classification accuracy when compared with single integrate and fire neuron model. It is observed that biological phenomenon makes artificial neural network efficient for the classification.
机译:本文提出了一种生物学逼真的非线性集成和火模型。它的完整解决方案是衍生的,并用于在多层Perceptron模型中构建聚集函数,用于UCI机器学习数据集的分类。发现传统神经网络中的单个神经元足以进行分类数据集。已经观察到,与单一整合和消防神经元模型相比,所提出的神经元模型在分类准确性方面远远优越。观察到生物现象使人工神经网络的分类有效。

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