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On Training Efficiency and Computational Costs of a Feed Forward Neural Network: A Review

机译:前馈神经网络的训练效率和计算成本的研究进展

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A comprehensive review on the problem of choosing a suitable activation function for the hidden layer of a feed forward neural network has been widely investigated. Since the nonlinear component of a neural network is the main contributor to the network mapping capabilities, the different choices that may lead to enhanced performances, in terms of training, generalization, or computational costs, are analyzed, both in general-purpose and in embedded computing environments. Finally, a strategy to convert a network configuration between different activation functions without altering the network mapping capabilities will be presented.
机译:已经广泛地研究了为前馈神经网络的隐藏层选择合适的激活函数的问题。由于神经网络的非线性部分是网络映射功能的主要贡献者,因此在通用和嵌入式方面,都将分析可能导致训练,通用化或计算成本提高的性能的不同选择。计算环境。最后,将提出一种在不同的激活功能之间转换网络配置而不改变网络映射功能的策略。

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