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Statistical analysis of the effect of noise injection during neural network training

机译:神经网络训练中噪声注入效果的统计分析

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Abstract: It is commonly accepted that the modification of the weights during training of an Artificial Neural Network can be augmented by addition of a random element chosen from various distributions. This technique, referred to as Noise Injection, allows the training process to stochastically traverse a larger subset of the sample space, as well as escape from local minima. This paper examines the effect of noise injection on the training cycle of feedforward neural networks. Emphasis is placed on the gradient descent weight modification technique of the backpropagation model. Statistical examination is made of the distribution of the effect within the topology of the weight space, upon the inputs to individual units, upon training time, and on the total error of the network. Since the weights of the network can be considered together as an n-tuple, injection of noise can be statistically examined within that n- dimensional space. It is shown that, for stochastically independent random distributions, the effect on this weight space and on the inputs to individual units is dependent upon the number of weights in the network. The multivariate distribution of the vector modification during training becomes increasingly distorted as the network size increases, such that noise injection has a more significant, and less stable, effect. Problems with traditional approaches are examined and an alternative noise injection method based on network size is presented.!13
机译:摘要:公认的是,在人工神经网络训练过程中权重的修改可以通过添加从各种分布中选择的随机元素来增强。这项技术被称为“噪声注入”,它允许训练过程随机遍历样本空间的较大子集,并逃避局部最小值。本文研究了噪声注入对前馈神经网络训练周期的影响。重点放在反向传播模型的梯度下降权重修改技术上。对权重空间拓扑内的影响分布,单个单元的输入,训练时间和网络的总误差进行统计检验。由于网络的权重可以一起视为一个n元组,因此可以在该n维空间内统计检查噪声的注入。结果表明,对于随机独立的随机分布,对该权重空间和单个单元输入的影响取决于网络中权重的数量。随着网络规模的增加,训练过程中向量修改的多元分布变得越来越失真,从而使噪声注入具有更显着,更不稳定的效果。研究了传统方法的问题,并提出了一种基于网络规模的替代噪声注入方法。13

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