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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Enhanced graph-based dimensionality reduction with repulsion Laplaceans
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Enhanced graph-based dimensionality reduction with repulsion Laplaceans

机译:斥力拉普拉斯增强了基于图的降维

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摘要

Graph-based methods for linear dimensionality reduction have recently attracted much attention and research efforts. The main goal of these methods is to preserve the properties of a graph representing the affinity between data points in local neighborhoods of the high-dimensional space. It has been observed that, in general, supervised graph-methods outperform their unsupervised peers in various classification tasks. Supervised graphs are typically constructed by allowing two nodes to be adjacent only if they are of the same class. However, such graphs are oblivious to the proximity of data from different classes. In this paper, we propose a novel methodology which builds on 'repulsion graphs', i.e., graphs that model undesirable proximity between points. The main idea is to repel points from different classes that are close by in the input high-dimensional space. The proposed methodology is generic and can be applied to any graph-based method for linear dimensionality reduction. We provide ample experimental evidence in the context of face recognition, which shows that the proposed methodology (i) offers significant performance improvement to various graph-based methods and (ii) outperforms existing solutions relying on repulsion forces.
机译:基于图的线性降维方法最近引起了很多关注和研究工作。这些方法的主要目标是保留表示高维空间局部邻域中数据点之间亲和性的图的属性。已经观察到,通常,在各种分类任务中,有监督的图方法要优于无监督的图方法。监督图通常是通过仅当两个节点属于同一类时才允许相邻的两个节点来构造的。但是,这样的图忽略了来自不同类别的数据的接近性。在本文中,我们提出了一种基于``排斥图''(即对点之间的不良接近建模的图)的新颖方法。主要思想是排斥输入高维空间中不同类别的点。所提出的方法是通用的,可以应用于任何基于图的线性降维方法。我们在人脸识别的背景下提供了充足的实验证据,表明所提出的方法(i)显着改善了各种基于图形的方法的性能,并且(ii)优于依赖于排斥力的现有解决方案。

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