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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Supervised neighborhood graph construction for semi-supervised classification
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Supervised neighborhood graph construction for semi-supervised classification

机译:半监督分类的监督邻域图构造

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摘要

Graph based methods are among the most active and applicable approaches studied in semi-supervised learning. The problem of neighborhood graph construction for these methods is addressed in this paper. Neighborhood graph construction plays a key role in the quality of the classification in graph based methods. Several unsupervised graph construction methods have been proposed that have addressed issues such as data noise, geometrical properties of the underlying manifold and graph hyper-parameters selection. In contrast, in order to adapt the graph construction to the given classification task, many of the recent graph construction methods take advantage of the data labels. However, these methods are not efficient since the hypothesis space of their possible neighborhood graphs is limited. In this paper, we first prove that the optimal neighborhood graph is a subgraph of a k′-NN graph for a large enough k′, which is much smaller than the total number of data points. Therefore, we propose to use all the subgraphs of k′-NNs graph as the hypothesis space. In addition, we show that most of the previous supervised graph construction methods are implicitly optimizing the smoothness functional with respect to the neighborhood graph parameters. Finally, we provide an algorithm to optimize the smoothness functional with respect to the neighborhood graph in the proposed hypothesis space. Experimental results on various data sets show that the proposed graph construction algorithm mostly outperforms the popular k-NN based construction and other state-of-the-art methods.
机译:基于图的方法是在半监督学习中研究的最活跃和适用的方法之一。本文解决了这些方法的邻域图构造问题。在基于图的方法中,邻域图构造在分类质量中起着关键作用。已经提出了几种无监督的图形构造方法,这些方法解决了诸如数据噪声,底层流形的几何特性和图形超参数选择等问题。相反,为了使图构造适应给定的分类任务,许多最近的图构造方法都利用了数据标签。但是,这些方法效率不高,因为它们可能的邻域图的假设空间有限。在本文中,我们首先证明最优邻域图是k'-NN图的子图,其中k'-NN图足够大,k'远小于数据点的总数。因此,我们建议使用k'-NNs图的所有子图作为假设空间。另外,我们表明,大多数以前的受监管图构建方法都隐含地优化了关于邻域图参数的平滑功能。最后,我们提供了一种算法,可针对提出的假设空间中的邻域图优化平滑度函数。在各种数据集上的实验结果表明,所提出的图构造算法在性能上远远胜过流行的基于k-NN的构造和其他最新方法。

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