Graph Neural Networks (GNNs) are the first choice for learning algorithms on graph data. GNNs promise to integrate (i) node features as well as (ii) edge information in an end-to-end learning algorithm. How does this promise work out practically? In this paper, we study to what extend GNNs are necessary to solve prominent graph classification problems. We find that for graph classification, a GNN is not more than the sum of its parts. We also find that, unlike features, predictions with an edge-only model do not always transfer to GNNs.
翻译:图形神经网络(GNNs)是图表数据中学习算法的第一选择。 GNNs承诺将(一) 节点特征和(二) 边缘信息整合到端到端学习算法中。 这个预想如何实现? 在本文中,我们研究GNNs对于解决突出的图形分类问题有何必要。在图表分类中,我们发现GNN并不大于其部分的总和。 我们还发现,与特征不同的是,只有边缘模型的预测并不总是转移到GNNs。