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首页> 外文期刊>Medical Physics >Noise injection for training artificial neural networks: a comparison with weight decay and early stopping.
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Noise injection for training artificial neural networks: a comparison with weight decay and early stopping.

机译:用于训练人工神经网络的噪声注入:体重减轻和早期停止的比较。

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摘要

The purpose of this study was to investigate the effect of a noise injection method on the "overfitting" problem of artificial neural networks (ANNs) in two-class classification tasks. The authors compared ANNs trained with noise injection to ANNs trained with two other methods for avoiding overfitting: weight decay and early stopping. They also evaluated an automatic algorithm for selecting the magnitude of the noise injection. They performed simulation studies of an exclusive-or classification task with training datasets of 50, 100, and 200 cases (half normal and half abnormal) and an independent testing dataset of 2000 cases. They also compared the methods using a breast ultrasound dataset of 1126 cases. For simulated training datasets of 50 cases, the area under the receiver operating characteristic curve (AUC) was greater (by 0.03) when training with noise injection than when training without any regularization, and the improvement was greater than those from weight decay and early stopping (both of 0.02). For training datasets of 100 cases, noise injection and weight decay yielded similar increases in the AUC (0.02), whereas early stopping produced a smaller increase (0.01). For training datasets of 200 cases, the increases in the AUC were negligibly small for all methods (0.005). For the ultrasound dataset, noise injection had a greater average AUC than ANNs trained without regularization and a slightly greater average AUC than ANNs trained with weight decay. These results indicate that training ANNs with noise injection can reduce overfitting to a greater degree than early stopping and to a similar degree as weight decay.
机译:这项研究的目的是调查噪声注入方法对两类分类任务中人工神经网络(ANN)的“过度拟合”问题的影响。作者将经过噪声注入训练的人工神经网络与通过其他两种避免过拟合的方法训练的人工神经网络进行比较:体重衰减和提早停止。他们还评估了用于选择噪声注入幅度的自动算法。他们使用50、100和200个案例(半正常和一半异常)的训练数据集以及2000个案例的独立测试数据集对异或分类任务进行了模拟研究。他们还比较了使用1126例乳房超声数据集的方法。对于50个案例的模拟训练数据集,使用噪声注入训练的情况比不进行任何正则化训练的情况下,接收器工作特征曲线(AUC)下的面积更大(增加0.03),并且改善程度大于体重减轻和早期停止(均为0.02)。对于100个案例的训练数据集,噪声注入和体重减轻在AUC中产生了类似的增加(0.02),而早期停止产生了较小的增加(0.01)。对于200个案例的训练数据集,所有方法的AUC增量都可以忽略不计(0.005)。对于超声数据集,噪声注入的平均AUC高于未经正则化训练的ANN,平均AUC高于经过权重衰减训练的ANN。这些结果表明,使用噪声注入训练神经网络可以比早期停止更大程度地减少过度拟合,并且可以减轻体重减轻的相似程度。

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