GraphCrop: Subgraph Cropping for Graph Classification
Wang, Yiwei, Wang, Wei, Liang, Yuxuan, Cai, Yujun, Hooi, Bryan
–arXiv.org Artificial Intelligence
We present a new method to regularize graph neural networks (GNNs) for better generalization in graph classification. Observing that the omission of substructures does not necessarily change the class label of the whole graph, we develop the GraphCrop (Subgraph Cropping) data augmentation method to simulate the real-world noise of substructure omission. In principle, GraphCrop utilizes a node-centric strategy to crop a contiguous subgraph from the original graph while maintaining its connectivity. By preserving the valid structure contexts for graph classification, we encourage GNNs to understand the content of graph structures in a global sense, rather than rely on a few key nodes or edges, which may not always be present. GraphCrop is parameter learning free and easy to implement within existing GNN-based graph classifiers. Qualitatively, GraphCrop expands the existing training set by generating novel and informative augmented graphs, which retain the original graph labels in most cases. Quantitatively, GraphCrop yields significant and consistent gains on multiple standard datasets, and thus enhances the popular GNNs to outperform the baseline methods. Figure 1: Omission of substructures does not change the genre label'Action' of an actor Daniel Craig's egonetwork
arXiv.org Artificial Intelligence
Sep-22-2020