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Graph construction based on data self-representativeness and Laplacian smoothness

机译:基于数据自表示性和拉普拉斯平滑度的图构造

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Recently, graph-based semi-supervised learning (SSL) becomes a hot topic in machine learning and pattern recognition. It has been shown that constructing an informative graph is one of the most important steps in SST. since a good graph can significantly affect the final performance of learning algorithms. This paper has the following main contributions. First, we introduce a new graph construction method based on data self-representativeness and Laplacian smoothness (SRLS). Second, this method is refined by incorporating an adaptive coding scheme aiming at getting a sparse graph. Third, we propose two kernelized versions of the SRLS method. A series of experiments on several public image data sets show that the proposed methods can out-perform many state-of-the-art methods. It is shown that Laplacian smoothness criterion is indeed a powerful tool to get informative graphs. (C) 2016 Elsevier B.V. All rights reserved.
机译:最近,基于图的半监督学习(SSL)成为机器学习和模式识别中的热门话题。已经表明,构造信息图是SST中最重要的步骤之一。因为一个好的图形会极大地影响学习算法的最终性能。本文有以下主要贡献。首先,我们介绍一种基于数据自表示性和拉普拉斯平滑度(SRLS)的新图构造方法。其次,通过结合旨在获得稀疏图的自适应编码方案来完善该方法。第三,我们提出SRLS方法的两个内核版本。在几个公共图像数据集上进行的一系列实验表明,所提出的方法可以胜过许多最先进的方法。结果表明,拉普拉斯光滑度准则确实是获得信息图的有力工具。 (C)2016 Elsevier B.V.保留所有权利。

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