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Self-reinforced diffusion for graph-based semi-supervised learning

机译:基于图形的半监督学习的自增强扩散

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Graph construction is the essential component of graph-based semi-supervised learning. Gaussian kernel weighted graph is widely used in this field. The problem of using such kind of graphs is that they are susceptible to data noise. They cannot approximate the geodesic distance on the underlying manifold appropriately, especially for high-dimensional data. Diffusion process has shown its effectiveness of learning pair-wise affinities which is equivalent to a graph, due to its capability of revealing the geometry structure of the manifold. However, data density distribution and label information are ignored in this process, limiting its application for semi-supervised problems. To address these issues, we propose a variant of the diffusion process, named Self-Reinforced Diffusion, which can make use of the label information. As for data density distribution, we introduce an intuitive affinity term, called self-affinity, which can well approximate density distributions and can be directly diffused on the graph. Extensive experiments on noisy synthetic data and various real-world data have demonstrated the effectiveness of the proposed method on semi-supervised learning. (C) 2019 Elsevier B.V. All rights reserved.
机译:图表结构是基于图形的半监督学习的基本组成部分。高斯内核加权图广泛用于该领域。使用这种图表的问题是它们易受数据噪声的影响。它们不能适当地近似于底层歧管的测地距,特别是对于高维数据。扩散过程已经示出了其具有相当于曲线图的学习成对性亲和力的有效性,这是由于其揭示了歧管的几何结构的能力。但是,在此过程中忽略了数据密度分布和标签信息,限制了其对半监督问题的应用。为了解决这些问题,我们提出了一种扩散过程的变种,命名为自增强的扩散,可以利用标签信息。至于数据密度分布,我们引入了直观的亲和术语,称为自亲和力,可以很好地近似密度分布,并且可以直接在图上扩散。对嘈杂的合成数据和各种现实数据的广泛实验表明了提出的方法对半监督学习的有效性。 (c)2019 Elsevier B.v.保留所有权利。

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