Timezone: »
We propose a novel graph cross network (GXN) to achieve comprehensive feature learning from multiple scales of a graph. Based on trainable hierarchical representations of a graph, GXN enables the interchange of intermediate features across scales to promote information flow. Two key ingredients of GXN include a novel vertex infomax pooling (VIPool), which creates multiscale graphs in a trainable manner, and a novel feature-crossing layer, enabling feature interchange across scales. The proposed VIPool selects the most informative subset of vertices based on the neural estimation of mutual information between vertex features and neighborhood features. The intuition behind is that a vertex is informative when it can maximally reflect its neighboring information. The proposed feature-crossing layer fuses intermediate features between two scales for mutual enhancement by improving information flow and enriching multiscale features at hidden layers. The cross shape of feature-crossing layer distinguishes GXN from many other multiscale architectures. Experimental results show that the proposed GXN improves the classification accuracy by 2.12% and 1.15% on average for graph classification and vertex classification, respectively. Based on the same network, the proposed VIPool consistently outperforms other graph-pooling methods.
Author Information
Maosen Li (Shanghai Jiao Tong University)
Siheng Chen (Shanghai Jiao Tong University)
Ya Zhang (Cooperative Medianet Innovation Center, Shang hai Jiao Tong University)
Ivor Tsang (University of Technology, Sydney)
Related Events (a corresponding poster, oral, or spotlight)
-
2020 Oral: Graph Cross Networks with Vertex Infomax Pooling »
Thu. Dec 10th 02:00 -- 02:15 PM Room Orals & Spotlights: Graph/Relational/Theory
More from the Same Authors
-
2022 Spotlight: Where2comm: Communication-Efficient Collaborative Perception via Spatial Confidence Maps »
Yue Hu · Shaoheng Fang · Zixing Lei · Yiqi Zhong · Siheng Chen -
2022 Poster: Where2comm: Communication-Efficient Collaborative Perception via Spatial Confidence Maps »
Yue Hu · Shaoheng Fang · Zixing Lei · Yiqi Zhong · Siheng Chen -
2021 Poster: Collaborative Uncertainty in Multi-Agent Trajectory Forecasting »
Bohan Tang · Yiqi Zhong · Ulrich Neumann · Gang Wang · Siheng Chen · Ya Zhang -
2020 Poster: Subgroup-based Rank-1 Lattice Quasi-Monte Carlo »
Yueming LYU · Yuan Yuan · Ivor Tsang -
2018 Poster: Masking: A New Perspective of Noisy Supervision »
Bo Han · Jiangchao Yao · Gang Niu · Mingyuan Zhou · Ivor Tsang · Ya Zhang · Masashi Sugiyama -
2018 Poster: Co-teaching: Robust training of deep neural networks with extremely noisy labels »
Bo Han · Quanming Yao · Xingrui Yu · Gang Niu · Miao Xu · Weihua Hu · Ivor Tsang · Masashi Sugiyama -
2017 Poster: Sparse Embedded $k$-Means Clustering »
Weiwei Liu · Xiaobo Shen · Ivor Tsang -
2015 Poster: On the Optimality of Classifier Chain for Multi-label Classification »
Weiwei Liu · Ivor Tsang