Graph classification is a highly impactful task that plays a crucial role in a myriad of real-world applications such as molecular property prediction and protein function prediction.Aiming to handle the new classes with limited labeled graphs, few-shot graph classification has become a bridge of existing graph classification solutions and practical usage.This work explores the potential of metric-based meta-learning for solving few-shot graph classification.We highlight the importance of considering structural characteristics in the solution and propose a novel framework which explicitly considers global structure and local structure of the input graph. An implementation upon GIN, named SMF-GIN, is tested on two datasets, Chembl and TRIANGLES, where extensive experiments validate the effectiveness of the proposed method. The Chembl is constructed to fill in the gap of lacking large-scale benchmark for few-shot graph classification evaluation, which is released together with the implementation of SMF-GIN at: https://github.com/jiangshunyu/SMF-GIN.
翻译:图表分类是一项影响很大的任务,在诸如分子财产预测和蛋白质功能预测等多种现实世界应用中发挥着关键作用。 为了处理带有有限标签图表的新类别,微小图分类已成为现有图表分类解决办法和实际用途的桥梁。 这项工作探索了解决微小图分类的基于标准的元学习潜力。 我们强调在解决方案中考虑结构特点的重要性,并提议一个新框架,明确考虑输入图的全球结构和当地结构。 GIN(称为SMF-GIN)的实施工作在两个数据集(Chembl和TRIANGLES)上进行了测试,在这两个数据集(Chembl和TRIANGLES)上进行了广泛的实验,验证了拟议方法的有效性。Chembl是用来填补微小图分类评价缺乏的大型基准差距的,该基准与SMF-GIN(https://github.com/jiangshunyu/SMF-GIN)一起发布。