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Robust and Dynamic Graph Convolutional Network For Multi-view Data Classification

机译:用于多视图数据分类的鲁棒和动态图形卷积网络

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摘要

Since graph learning could preserve the structure information of the samples to improve the learning ability, it has been widely applied in both shallow learning and deep learning. However, the current graph learning methods still suffer from the issues such as outlier influence and model robustness. In this paper, we propose a new dynamic graph neural network (DGCN) method to conduct semi-supervised classification on multi-view data by jointly conducting the graph learning and the classification task in a unified framework. Specifically, our method investigates three strategies to improve the quality of the graph before feeding it into the GCN model: (ⅰ) employing robust statistics to consider the sample importance for reducing the outlier influence, i.e. assigning every sample with soft weights so that the important samples are with large weights and outliers are with small or even zero weights; (ⅱ) learning the common representation across all views to improve the quality of the graph for every view; and (ⅲ) learning the complementary information from all initial graphs on multi-view data to further improve the learning of the graph for every view. As a result, each of the strategies could improve the robustness of the DGCN model. Moreover, they are complementary for reducing outlier influence from different aspects, i.e. the sample importance reduces the weights of the outliers, both the common representation and the complementary information improve the quality of the graph for every view. Experimental result on real data sets demonstrates the effectiveness of our method, compared to the comparison methods, in terms of multi-class classification performance.
机译:由于图形学习可以保留样本的结构信息来提高学习能力,因此它已被广泛应用于浅学习和深度学习。然而,目前的图表学习方法仍然遭受异常影响和模型稳健性等问题。在本文中,我们提出了一种新的动态图形神经网络(DGCN)方法,通过在统一框架中共同进行图形学习和分类任务来对多视图数据进行半监督分类。具体而言,我们的方法调查了三种策略,以提高图表的质量,然后进入GCN模型:(Ⅰ)采用强大的统计数据,以考虑降低异常影响力的样本,即分配具有柔软重量的每个样本,使得重要的样品具有大量重量,异常值小甚至零重量; (Ⅱ)在所有视图中学习共同的代表,以提高每个视图的图表的质量; (Ⅲ)从多视图数据上的所有初始图表中学习互补信息,以进一步改善每个视图的图表的学习。结果,每个策略可以提高DGCN模型的稳健性。此外,它们是互补的,用于降低不同方面的异常影响,即样本重要性降低了异常值的权重,普通表示和互补信息都可以为每个视图提高图表的质量。与多级分类性能的比较方法相比,实验数据集的实验结果表明了我们的方法的有效性。

著录项

  • 来源
    《The Computer journal》 |2021年第7期|1093-1103|共11页
  • 作者单位

    Center for Future Media and School of Computer Science and Technology University of Electronic Science and Technology of China Chengdu 611731 China;

    Center for Future Media and School of Computer Science and Technology University of Electronic Science and Technology of China Chengdu 611731 China;

    Center for Future Media and School of Computer Science and Technology University of Electronic Science and Technology of China Chengdu 611731 China;

    School of Information and Software Engineering University of Electronic Science and Technology of China Chengdu 611731 China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    multi-view data; graph convolutional network; graph learning;

    机译:多视图数据;图形卷积网络;图表学习;

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