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Non-linear Metric Learning Using Metric Tensor

机译:使用度量张量的非线性度量学习

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Manifold based metric learning methods have become increasingly popular in recent years. In almost all these methods, however, the underlying manifold is approximated by a point cloud, and the matric tensor, which is the most basic concept to describe the manifold, is neglected. In this paper, we propose a non-linear metric learning framework based on metric tensor. We construct a Riemannian manifold and its metric tensor on sample space, and replace the Euclidean metric by the learned Riemannian metric. By doing this, the sample space is twisted to a more suitable form for classification, clustering and other applications. The classification and clustering results on several public datasets show that the learned metric is effective and promising.
机译:近年来,基于歧管的公制学习方法变得越来越受欢迎。然而,在几乎所有这些方法中,底层歧管由点云近似,并且忽略了用于描述歧管的最基本概念的Matric Tensor。在本文中,我们提出了一种基于度量张量的非线性度量学习框架。我们在样本空间构建riemannian歧管及其公制张量,并通过学习的riemananian度量替换欧几里德公制。通过这样做,样本空间被扭曲为更合适的形式,用于分类,聚类和其他应用。几个公共数据集的分类和聚类结果表明,学习的度量是有效和有前途的。

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