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Generalization Error of Invariant Classifiers

机译:不变分类器的泛化误差

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This paper studies the generalization error of invariant classifiers. In particular, we consider the common scenario where the classification task is invariant to certain transformations of the input, and that the classifier is constructed (or learned) to be invariant to these transformations. Our approach relies on factoring the input space into a product of a base space and a set of transformations. We show that whereas the generalization error of a non-invariant classifier is proportional to the complexity of the input space, the generalization error of an invariant classifier is proportional to the complexity of the base space. We also derive a set of sufficient conditions on the geometry of the base space and the set of transformations that ensure that the complexity of the base space is much smaller than the complexity of the input space. Our analysis applies to general classifiers such as convolutional neural networks. We demonstrate the implications of the developed theory for such classifiers with experiments on the MNIST and CIFAR-10 datasets.
机译:本文研究了不变分类器的泛化误差。特别地,我们考虑以下常见情况:分类任务对于输入的某些转换是不变的,并且构造(或学习)分类器对于这些转换是不变的。我们的方法依赖于将输入空间分解为基本空间和一组转换的乘积。我们表明,虽然不变分类器的泛化误差与输入空间的复杂度成正比,但不变分类器的泛化误差与基础空间的复杂度成正比。我们还对基础空间的几何形状和一组转换得出了一组充分条件,这些条件确保基础空间的复杂度远小于输入空间的复杂度。我们的分析适用于一般分类器,例如卷积神经网络。我们通过在MNIST和CIFAR-10数据集上进行的实验证明了这种分类器的发展理论的意义。

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