Appropriate Selection for Numbers of neurons and layers in a Neural Network Architecture: A Brief Analysis

Asif Aziz, T. Khan, Umar Iftikhar, Irfan Tanoli, Asif Khalid Qureshi
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Abstract

Identification of optimal number of neurons and layers in a proposed neural architecture is very complex for the better results. The determination of the hidden layer number is also very difficult task for the proposed network. The recognition of the effective neural network model in terms of accuracy and precision in results as well as in terms of computational resources is very crucial in the community of the computer scientists. An effective proposed neural network architecture must comprise the appropriate numbers of perceptrons and number of layers. Another research gap was also reported by the researchers community that the perceptron stuck during the training phase in finding minima or maxima for stochastic gradient to solve any engineering application. Therefore to resolve the problem of selection of neurons and layers an analysis was performed to evaluate the performance of the neural network architecture with different neurons and layers on the same data set. The results revealed that the justified network architecture would contain justified number of neurons and layers as more number of neurons and layers increase more computational resources and training time. It was suggested that a neural network architecture should be proposed comprising of minimum 2 to 5 layers. Entropy and Mean square error was  considered as a yardstick to measure the neural network architecture performance. Results depicted that the an effective neural network architecture must initially be simulated or checked with minimum number of instances to evaluate the model.
神经网络架构中神经元和层数的适当选择:简要分析
要想获得更好的结果,确定拟议神经架构中神经元和神经层的最佳数量非常复杂。对于拟议的网络来说,确定隐藏层数也是一项非常困难的任务。在计算机科学家群体中,从结果的准确性和精确性以及计算资源的角度来识别有效的神经网络模型是非常重要的。一个有效的拟议神经网络架构必须包含适当数量的感知器和层数。研究人员还报告了另一项研究空白,即感知器在训练阶段会卡住,无法找到随机梯度的最小值或最大值,从而无法解决任何工程应用问题。因此,为了解决神经元和神经层的选择问题,我们进行了一项分析,以评估在同一数据集上使用不同神经元和神经层的神经网络架构的性能。结果显示,合理的网络架构应包含合理数量的神经元和神经层,因为神经元和神经层越多,计算资源和训练时间就越长。建议提出的神经网络架构应至少包含 2 至 5 层。熵和均方误差被视为衡量神经网络架构性能的标准。结果表明,有效的神经网络架构必须首先用最少的实例进行模拟或检查,以评估模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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