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M-Evolve: Structural-Mapping-Based Data Augmentation for Graph Classification

机译:M-Evolve:图形分类的基于结构映射的数据增强

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摘要

Graph classification, which aims to identify the category labels of graphs, plays a significant role in drug classification, toxicity detection, protein analysis etc. However, the limitation of scale in the benchmark datasets makes it easy for graph classification models to fall into over-fitting and undergeneralization. To improve this, we introduce data augmentation on graphs (i.e. graph augmentation) and present four methods: random mapping, vertex-similarity mapping, motif-random mapping and motif-similarity mapping, to generate more weakly labeled data for small-scale benchmark datasets via heuristic transformation of graph structures. Furthermore, we propose a generic model evolution framework, named M-Evolve, which combines graph augmentation, data filtration and model retraining to optimize pre-trained graph classifiers. Experiments on six benchmark datasets demonstrate that the proposed framework helps existing graph classification models alleviate over-fitting and undergeneralization in the training on small-scale benchmark datasets, which successfully yields an average improvement of 3-13% accuracy on graph classification tasks.
机译:图表分类,旨在识别图表的类别标签,在药物分类,毒性检测,蛋白质分析等中发挥着重要作用,但基准数据集中的规模的限制使得图形分类模型容易崩溃 - 拟合和平衡。为了改善这一点,我们在图表(即图形增强)上引入数据增强,并出现了四种方法:随机映射,顶点相似性映射,图案随机映射和图案相似性映射,为小规模基准数据集生成更弱标记的数据通过图形结构的启发式转换。此外,我们提出了一个名为M-Evolve的通用模型演进框架,它将图形增强,数据过滤和模型再培训组合以优化预先训练的图形分类器。六个基准数据集上的实验表明,所提出的框架有助于现有的图形分类模型缓解小规模基准数据集的培训中的过度拟合和平衡,这成功产生了3-13%的图形分类任务精度的平均提高。

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