用谱方法研究无穷层残差神经网络的鲁棒性

IF 1.7 Q2 MATHEMATICS, APPLIED Foundations of data science (Springfield, Mo.) Pub Date : 2019-01-01 DOI:10.3934/fods.2020012
T. Trimborn, Stephan Gerster, G. Visconti
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引用次数: 4

摘要

近年来,具有无限层数的神经网络(NN)被引入。特别是对于这些非常大的神经网络,训练过程是非常昂贵的。因此,有兴趣研究它们相对于输入数据的鲁棒性,以避免不必要的再训练网络。通常,基于模型的统计推理方法,如贝叶斯神经网络,被用来量化不确定性。在这里,我们考虑一类特殊的残差神经网络,并研究了当层数可以任意大时的情况。然后,动力学理论允许将网络解释为一个动力系统,用偏微分方程来描述。通过对损失函数应用UQ方法,研究了平均场神经网络对初始数据扰动的鲁棒性。
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Spectral methods to study the robustness of residual neural networks with infinite layers
Recently, neural networks (NN) with an infinite number of layers have been introduced. Especially for these very large NN the training procedure is very expensive. Hence, there is interest to study their robustness with respect to input data to avoid unnecessarily retraining the network. Typically, model-based statistical inference methods, e.g. Bayesian neural networks, are used to quantify uncertainties. Here, we consider a special class of residual neural networks and we study the case, when the number of layers can be arbitrarily large. Then, kinetic theory allows to interpret the network as a dynamical system, described by a partial differential equation. We study the robustness of the mean-field neural network with respect to perturbations in initial data by applying UQ approaches on the loss functions.
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