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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Deep graph learning for semi-supervised classification
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Deep graph learning for semi-supervised classification

机译:深图学习半监督分类

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摘要

Graph learning (GL) can dynamically capture the distribution structure (graph structure) of data based on graph convolutional networks (GCN), and the learning quality of the graph structure directly influ-ences GCN for semi-supervised classification. Most existing methods combine the computational layer and the related losses into GCN for exploring the global graph (measuring graph structure from all data samples) or local graph (measuring graph structure from local data samples). The global graph empha-sizes the whole structure description of the inter-class data, while the local graph tends to the neigh-borhood structure representation of the intra-class data. However, it is difficult to simultaneously balance these learning process graphs for semi-supervised classification because of the interdependence of these graphs. To simulate the interdependence, deep graph learning (DGL) is proposed to find a better graph representation for semi-supervised classification. DGL can not only learn the global structure by the pre-vious layer metric computation updating, but also mine the local structure by next layer local weight reassignment. Furthermore, DGL can fuse the different structures by dynamically encoding the interde-pendence of these structures, and deeply mine the relationship of the different structures by hierarchical progressive learning to improve the performance of semi-supervised classification. Experiments demon-strate that the DGL outperforms state-of-the-art methods on three benchmark datasets (Citeseer, Cora, and Pubmed) for citation networks and two benchmark datasets (MNIST and Cifar10) for images.
机译:图学习(GL)可以基于图卷积网络(GCN)动态捕捉数据的分布结构(图结构),图结构的学习质量直接影响半监督分类的GCN。现有的大多数方法将计算层和相关损失结合到GCN中,以探索全局图(从所有数据样本测量图结构)或局部图(从局部数据样本测量图结构)。全局图强调类间数据的整体结构描述,而局部图倾向于类内数据的相邻结构表示。然而,由于这些图之间的相互依赖性,在半监督分类中很难同时平衡这些学习过程图。为了模拟相互依赖性,提出了深度图学习(DGL)来寻找更好的半监督分类图表示。DGL不仅可以通过前一层度量计算更新来学习全局结构,还可以通过下一层局部权重重新分配来挖掘局部结构。此外,DGL可以通过动态编码不同结构之间的相互依赖关系来融合不同的结构,并通过分层递进学习深入挖掘不同结构之间的关系,从而提高半监督分类的性能。实验表明,DGL在引文网络的三个基准数据集(Citeseer、Cora和Pubmed)和图像的两个基准数据集(MNIST和Cifar10)上优于最先进的方法。

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