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Graph Construction Based on Nonnegative Sparse Representation for Semi-supervised Learning

机译:基于非负稀疏表示的半监督学习图构造

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摘要

It is well known that the graph construction is the key part of graph-based semi-supervised learning algorithms, and the performance of algorithms relies heavily on the graph weight matrix given by graph construction process. In this paper, we propose two graph construction models based on nonnegative sparse representation. These two models accommodate small possible noise, and moreover, their solutions are sparse and nonnegative which can be used as the graph weights directly. Weights generated in such a way can reflect the point neighborhood structure well, thereby providing favorable similarity measures for the sample pairs. Numerical experiments on several UCI and face datasets indicate that in most cases the results yielded by the proposed algorithms are comparable even superior to the best ones yielded by the algorithms based on traditional graph construction methods and L1 graph.
机译:众所周知,图构建是基于图的半监督学习算法的关键部分,算法的性能在很大程度上依赖于图构建过程给出的图权矩阵。在本文中,我们提出了两种基于非负稀疏表示的图构造模型。这两个模型可以容纳很小的噪声,此外,它们的解决方案稀疏且非负,可以直接用作图形权重。以这种方式生成的权重可以很好地反映点邻域结构,从而为样本对提供有利的相似性度量。在几个UCI和人脸数据集上的数值实验表明,在大多数情况下,所提出的算法所产生的结果甚至可以优于基于传统图构造方法和L1图的算法所产生的最佳结果。

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