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Discriminative globality and locality preserving graph embedding for dimensionality reduction

机译:歧视的全球性和地方保存图嵌入维数减少

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Graph embedding in dimensionality reduction has attracted much attention in the high-dimensional data analysis. Graph construction in graph embedding plays an important role in the quality of dimensionality reduction. However, the discrimination information and the geometrical distributions of data samples are not fully exploited for discovering the essential geometrical and discriminant structures of data and strengthening the pattern discrimination in graph constructions of graph embedding. To overcome the limitations of graph constructions, in this article we propose a novel graph-based dimensionality reduction method entitled discriminative globality and locality preserving graph embedding (DGLPGE) by designing the informative globality and locality preserving graph constructions. In the constructed graphs, bidirectional weights of edges are newly defined by considering both the geometrical distributions of each point of edges and the class discrimination. Using the adjacent weights of graphs, we characterize the intra-class globality preserving scatter, the inter-class globality preserving scatter and the locality preserving scatter to formulate the objective function of DGLPGE in order to optimize the projection of dimensionality reduction. Extensive experiments demonstrate that the proposed DGLPGE often outperforms the state-of-the-art dimensionality reduction methods. (C) 2019 Elsevier Ltd. All rights reserved.
机译:在维数减少中嵌入的图表在高维数据分析中引起了很多关注。图表嵌入中的图形结构在减少维度的质量下起着重要作用。然而,歧视信息和数据样本的几何分布不充分利用用于发现数据的基本几何和判别结构,并加强图形嵌入的图形结构中的图案辨别。为了克服图形结构的局限,在本文中,我们提出了一种基于图形的维度减少方法,其通过设计信息性地板和位置保留图结构来嵌入鉴别的全球性和位置保留图(DGLPGE)。在构造的图表中,通过考虑每个边缘和类别辨别的几何分布来新定义边缘的双向重量。利用相邻的图表权重,我们表征了阶级内部全球性保存散射,阶级间全球性保存散射和保留散射的散射,以制定DGLPGE的目标函数,以优化维度降低的投影。广泛的实验表明,所提出的DGLPGE经常优于最先进的维度减少方法。 (c)2019 Elsevier Ltd.保留所有权利。

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