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Translation Invariance in the Polynomial Kernel Space and Its Applications in kNN Classification

机译:多项式核空间中的平移不变性及其在kNN分类中的应用

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摘要

In this paper, a new technique is presented to measure dissimilarity in kernel space providing scaling and translation invariance. The motivation comes from signal/image processing, where classifiers are often required to ensure invariance against linear transforms, since in many cases linear transforms do not affect the content of a signal/image for a human observer. We examine the theoretical background of linear invariance in the polynomial kernel space, introduce the centered correlation and centered Euclidean dissimilarity in kernel space, deduce formulas to compute it efficiently and test the proposed dissimilarity measures with the kNN classifier. The experimental results show that the presented techniques are highly competitive in similarity or dissimilarity based classification methods.
机译:在本文中,提出了一种新技术来测量内核空间中的不相似性,从而提供缩放和平移不变性。动机来自信号/图像处理,在这种情况下,通常需要使用分类器来确保针对线性变换的不变性,因为在许多情况下,线性变换不会影响人类观察者的信号/图像的内容。我们研究了多项式核空间中线性不变性的理论背景,介绍了核空间中的中心相关性和中心欧几里得不相似度,推导了有效地计算公式并使用kNN分类器测试了所提出的相异性度量。实验结果表明,所提出的技术在基于相似或不相似的分类方法中具有很高的竞争力。

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