具有前馈抑制的高级卷积神经网络

Lu Liu, Shuling Yang, D. Shi
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引用次数: 0

摘要

卷积神经网络是一种具有鲁棒模式识别能力的多层神经网络。然而,当激活函数为s型时,卷积神经网络会产生梯度消失问题。本文首先分析了梯度消失问题,然后基于神经学中激励与抑制机制的平衡,提出利用前馈抑制降低激活值,消除权值的尺度效应,使模型在保持非线性拟合能力的前提下加速收敛。结果表明,改进的卷积神经网络可以有效地缓解梯度消失问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advanced Convolutional Neural Network With Feedforward Inhibition
Convolutional neural network is a multi-layer neural network with robust pattern recognition ability. However, when the activation function is sigmoid, the convolutional neural network produces gradient vanishing problem. First, this paper analyzes the gradient vanishing problem, and then based on the balance of excitation and inhibition mechanism in neurology, it is proposed to use feed-forward inhibition to reduce activition value and wipe off the scale effect of weights, so that the model can accelerate convergence under the premise of maintaining the nonlinear fitting ability. The results show that the improved convolutional neural network can effectively relieve the gradient vanishing problem.
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