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Continuum directions for supervised dimension reduction

机译:监督维度减少的连续性方向

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摘要

Dimension reduction of multivariate data supervised by auxiliary information is considered. A series of basis for dimension reduction is obtained as minimizers of a novel criterion. The proposed method is akin to continuum regression, and the resulting basis is called continuum directions. With a presence of binary supervision data, these directions continuously bridge the principal component, mean difference and linear discriminant directions, thus ranging from unsupervised to fully supervised dimension reduction. High dimensional asymptotic studies of continuum directions for binary supervision reveal several interesting facts. The conditions under which the sample continuum directions are inconsistent, but their classification performance is good, are specified. While the proposed method can be directly used for binary and multi-category classification, its generalizations to incorporate any form of auxiliary data are also presented. The proposed method enjoys fast computation, and the performance is better or on par with more computer-intensive alternatives. (C) 2018 Elsevier B.V. All rights reserved.
机译:考虑了由辅助信息监督的多变量数据的尺寸减少。作为新标准的最小化学者获得了一系列尺寸减少的基础。所提出的方法类似于连续性回归,所得到的基础称为连续性方向。通过存在二进制监控数据,这些方向连续桥接主成分,平均差异和线性判别方向,从而从无监督到完全监督的尺寸减少。二元监督的连续性方向的高尺寸渐近研究揭示了几个有趣的事实。样本连续管道方向不一致的条件,但它们的分类性能很好。虽然所提出的方法可以直接用于二进制和多类别分类,但还呈现了包含任何形式的辅助数据的概括。该方法享有快速计算,性能更好或与更电脑密集型替代品的表现更好。 (c)2018 Elsevier B.v.保留所有权利。

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