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Improvement of learning performance of multi-layer perceptron by two different pulse glial networks

机译:两种不同的脉冲神经胶质网络提高多层感知器的学习性能

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A glia is the most number of nervous cells in a brain. The glia is investigated in a medical field, because the glia correlates to neuron works and composes a human cerebration. We consider that the glia function can be applied to an artificial neural network. In this study, we propose the Multi-Layer Perceptron (MLP) with the two different pulse glial networks. The proposed MLP has the glial network which is inspired from biological functions of the glia. One neuron is connected with two glias. Two glias generate the pulse depending on the output neurons. One glia connects the neuron for increasing the output of neuron. On the other hand, the glia connects the neuron for decreasing the output of neuron. Both glias composes the glial networks. These effects are propagated into the networks. The glial effects become complexity and affects the MLP learning performance. By the computer simulation, we confirm that the learning performance of the proposed MLP is better than the conventional MLP.
机译:胶质细胞是大脑中最多的神经细胞。由于神经胶质与神经元的工作相关并构成人类的大脑,因此在医学领域对神经胶质进行了研究。我们认为神经胶质函数可以应用于人工神经网络。在这项研究中,我们提出了具有两个不同的脉冲神经胶质网络的多层感知器(MLP)。拟议的MLP具有神经胶质网络,其受胶质细胞生物学功能的启发。一个神经元与两个胶质细胞相连。取决于输出的神经元,两个胶质细胞产生脉冲。一个神经胶质细胞连接神经元以增加神经元的输出。另一方面,神经胶质连接神经元以减少神经元的输出。两种胶质细胞组成神经胶质网络。这些影响传播到网络中。神经胶质效应变得复杂并影响MLP学习性能。通过计算机仿真,我们确认了所提出的MLP的学习性能优于传统的MLP。

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