神经网络的斜率和泛化性质

Anton Johansson, N. Engsner, Claes Strannegård, P. Mostad
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引用次数: 0

摘要

神经网络是非常成功的工具,例如高级分类。从统计学的角度来看,拟合神经网络可以被视为一种回归,我们从输入空间寻找一个函数,该函数遵循数据的“一般”形状,但通过避免记忆单个数据点来避免过拟合。在统计学中,这可以通过控制回归函数的几何复杂度来实现。我们建议在拟合神经网络时通过控制网络的斜率来做类似的事情。在定义了斜率并讨论了它的一些理论性质之后,我们继续在使用ReLU网络的例子中经验地展示,训练良好的神经网络分类器的斜率分布通常与全连接网络中的层宽度无关,并且分布的平均值通常仅对模型架构有弱依赖性。我们讨论了斜率概念的可能应用,例如在网络训练期间将其用作损失函数或停止准则的一部分,或者根据其复杂性对数据集进行排序。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Slope and Generalization Properties of Neural Networks
Neural networks are very successful tools in for example advanced classification. From a statistical point of view, fitting a neural network may be seen as a kind of regression, where we seek a function from the input space to a space of classification probabilities that follows the “general” shape of the data, but avoids overfitting by avoiding memorization of individual data points. In statistics, this can be done by controlling the geometric complexity of the regression function. We propose to do something similar when fitting neural networks by controlling the slope of the network.After defining the slope and discussing some of its theoretical properties, we go on to show empirically in examples, using ReLU networks, that the distribution of the slope of a well-trained neural network classifier is generally independent of the width of the layers in a fully connected network, and that the mean of the distribution only has a weak dependence on the model architecture in general. We discuss possible applications of the slope concept, such as using it as a part of the loss function or stopping criterion during network training, or ranking data sets in terms of their complexity.
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