论文标题
基于公制的几个图形分类
Metric Based Few-Shot Graph Classification
论文作者
论文摘要
如果没有巨大的数据集,许多现代的深度学习技术就无法正常工作。同时,几个领域要求在稀缺数据方面起作用。当样本具有变化的结构时,此问题甚至更加复杂,如图所示。图表示学习技术最近已证明在各种领域中都成功。然而,当面对数据稀缺时,就业的体系结构表现不佳。另一方面,很少的学习允许在稀缺的数据制度中采用现代深度学习模型,而不会放弃其有效性。在这项工作中,我们解决了几乎没有图形分类的问题,这表明将简单的距离度量学习基线配备了最先进的图形嵌入器,可以在任务上获得竞争结果。尽管架构的简单性足以超越更复杂的架构,但它也可以简单地添加。为此,我们表明可以通过鼓励任务条件的嵌入空间来获得其他改进。最后,我们提出了一种基于混合的在线数据增强技术,该技术在潜在空间中发挥作用,并显示其对任务的有效性。
Many modern deep-learning techniques do not work without enormous datasets. At the same time, several fields demand methods working in scarcity of data. This problem is even more complex when the samples have varying structures, as in the case of graphs. Graph representation learning techniques have recently proven successful in a variety of domains. Nevertheless, the employed architectures perform miserably when faced with data scarcity. On the other hand, few-shot learning allows employing modern deep learning models in scarce data regimes without waiving their effectiveness. In this work, we tackle the problem of few-shot graph classification, showing that equipping a simple distance metric learning baseline with a state-of-the-art graph embedder allows to obtain competitive results on the task. While the simplicity of the architecture is enough to outperform more complex ones, it also allows straightforward additions. To this end, we show that additional improvements may be obtained by encouraging a task-conditioned embedding space. Finally, we propose a MixUp-based online data augmentation technique acting in the latent space and show its effectiveness on the task.