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Comparing of deep neural networks and extreme learning machines based on growing and pruning approach

机译:基于成长和修剪方法的深度神经网络和极限学习机器的比较

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摘要

Recently, the studies based on Deep Neural Networks and Extreme Learning Machines have become prominent. The models of parameters designed in these studies have been chosen randomly and the models have been designed in this direction. The main focus of this study is to determine the ideal parameters i.e. optimum hidden layer number, optimum hidden neuron number and activation function for Deep Neural Networks and Extreme Learning Machines architectures based on growing and pruning approach and to compare the performances of the models designed. The performances of the models are evaluated on two datasets; Parkinson and Self-Care Activities Dataset. Multi experiments have verified that the Deep Neural Networks architectures present a good prediction performance and this architecture outperforms the Extreme Learning Machines. (C) 2019 Elsevier Ltd. All rights reserved.
机译:近来,基于深度神经网络和极限学习机的研究变得非常重要。这些研究中设计的参数模型是随机选择的,并且已经朝这个方向设计了模型。这项研究的主要重点是确定基于增长和修剪方法的理想参数,即用于深度神经网络和极限学习机架构的最佳隐藏层数,最佳隐藏神经元数和激活函数,并比较设计模型的性能。模型的性能在两个数据集上进行评估。帕金森和自理活动数据集。多项实验已证明,深度神经网络架构可提供良好的预测性能,并且该架构优于极限学习机。 (C)2019 Elsevier Ltd.保留所有权利。

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