Qiannan ZhangXiaodong WuQiang YangChuxu ZhangXiangliang Zhang
Graph few-shot learning seeks to alleviate the label scarcity problem resulting from the difficulties and high cost of data annotations in graph learning. However, the overwhelming solutions in graph few-shot learning focus on homogeneous graphs, ignoring the ubiquitous heterogeneous graphs (HGs), which represent real-world complex systems and domain knowledge with multi-typed nodes interconnected by multi-typed edges. To this end, we study the cross-domain few-shot learning problem over HGs and develop a novel model for Cross-domain Heterogeneous Graph Meta learning (CrossHG-Meta). The general idea is to promote the HG node classification in the data-scarce target domain by transferring meta-knowledge from a series of HGs in data-rich source domains. The key challenges are to 1) combat the heterogeneity in HGs to acquire the transferable meta-knowledge; 2) handle the domain shifts between the source HG and target HG; and 3) fast adapt to novel target tasks with few-shot annotated examples. Regarding the graph heterogeneity, CrossHG-Meta firstly builds a graph encoder to aggregate heterogeneous neighborhood information from multiple semantic contexts. Secondly, to tackle domain shifts, a cross-domain meta-learning strategy is proposed to include a domain critic, which is designed to explicitly lead cross-domain adaptation for meta-tasks in different domains and improve model generalizability. Last, to further alleviate data scarcity, CrossHG-Meta leverages unlabelled information in source domains with auxiliary self-supervised learning task to provide cross-domain contrastive regularization alongside the meta-optimization process to facilitate node embedding. Extensive experimental results on three multi-domain HG datasets demonstrate that the proposed model outperforms various state-of-the-art baselines for multiple few-shot node classification tasks under the cross-domain setting.
Huaxiu YaoChuxu ZhangYing WeiMeng JiangSuhang WangJunzhou HuangNitesh V. ChawlaZhenhui Li
Bin LüXiaoying GanWeinan ZhangHuaxiu YaoLuoyi FuXinbing Wang
Pengfang LiFang LiuLicheng JiaoShuo LiLingling LiXu LiuXinyan Huang
Yi GaoFangfang YuanCong CaoMajing SuDakui WangYanbing Liu