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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A generalized least-squares approach regularized with graph embedding for dimensionality reduction
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A generalized least-squares approach regularized with graph embedding for dimensionality reduction

机译:通过嵌入维数减少的曲线图,将广义最小二乘法进行规则化

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摘要

In current graph embedding methods, low dimensional projections are obtained by preserving either global geometrical structure of data or local geometrical structure of data. In this paper, the PCA (Principal Component Analysis) idea of minimizing least-squares reconstruction errors is regularized with graph embedding, to unify various local manifold embedding methods within a generalized framework to keep global and local low dimensional subspace. Different from the well-known PCA method, our proposed generalized least-squares approach considers data distributions together with an instance penalty in each data point. In this way, PCA is viewed as a special instance of our proposed generalized least squares framework for preserving global projections. Applying a regulation of graph embedding, we can obtain projection that preserves both intrinsic geometrical structure and global structure of data. From the experimental results on a variety of face and handwritten digit recognition, our proposed method has advantage of superior performances in keeping lower dimensional subspaces and higher classification results than state-of-the-art graph embedding methods. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在当前图形嵌入方法中,通过保留数据的全局几何结构或数据的局部几何结构来获得低维投影。在本文中,PCA(主成分分析)最小化最小二乘重建误差的想法是用曲线图嵌入的规范化,以统一广义框架内的各种局部歧管嵌入方法,以保持全局和局部低维子空间。与众所周知的PCA方法不同,我们提出的广义最小二乘方法将数据分布与每个数据点中的实例惩罚一起考虑。通过这种方式,PCA被视为我们提出的广义最小二乘框架的特殊实例,用于保留全局预测。应用图形嵌入的调节,我们可以获得保留内在几何结构和全局数据结构的投影。从实验结果从各种面部和手写的数字识别,我们所提出的方法具有优异的性能,以保持低维子空间和比最先进的图形嵌入方法的较高分类结果。 (c)2019年elestvier有限公司保留所有权利。

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