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On the Impact of Communities on Semi-supervised Classification Using Graph Neural Networks

机译:论社区对基于图形神经网络的半监督分类的影响

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Graph Neural Networks (GNNs) are effective in many applications. Still, there is a limited understanding of the effect of common graph structures on the learning process of GNNs. In this work, we systematically study the impact of community structure on the performance of GNNs in semi-supervised node classification on graphs. Following an ablation study on six datasets, we measure the performance of GNNs on the original graphs, and the change in performance in the presence and the absence of community structure. Our results suggest that communities typically have a major impact on the learning process and classification performance. For example, in cases where the majority of nodes from one community share a single classification label, breaking up community structure results in a significant performance drop. On the other hand, for cases where labels show low correlation with communities, we find that the graph structure is rather irrelevant to the learning process, and a feature-only baseline becomes hard to beat. With our work, we provide deeper insights in the abilities and limitations of GNNs, including a set of general guidelines for model selection based on the graph structure.
机译:图形神经网络(GNNS)在许多应用中都有效。尽管如此,有限地了解共同图形结构对GNN的学习过程的影响。在这项工作中,我们系统地研究了社区结构对图形半监督节点分类中GNN的性能的影响。在对六个数据集进行消融研究之后,我们测量GNN对原始图表的性能,以及在存在和缺乏社区结构中的性能变化。我们的研究结果表明,社区通常对学习过程和分类绩效产生重大影响。例如,在来自一个社区的大多数节点共享单个分类标签的情况下,打破社区结构导致显着的性能下降。另一方面,对于标签显示与社区的低相关性的情况下,我们发现图形结构与学习过程相当无关,并且只有特征基线变得难以击败。通过我们的工作,我们对GNN的能力和局限性提供了更深入的见解,包括基于图形结构的模型选择的一套一般指导。

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