Tour
Highlights
People
Vision
Research
Publications
Opportunities
Contact
Data Mining
Going Deep: Graph Convolutional Ladder-shape Networks
Neighborhood aggregation algorithms like spectral graph convolutional networks (GCNs) formulate graph convolutions as a symmetric …
Ruiqi Hu
,
Shirui Pan
,
Guodong Long
,
Qinghua Lu
,
Liming Zhu
,
Jing Jiang
PDF
Cite
GSSNN: Graph Smoothing Splines Neural Networks
Graph Neural Networks (GNNs) have achieved state-of-the-art performance in many graph data analysis tasks. However, they still suffer …
Shichao Zhu
,
Lewei Zhou
,
Shirui Pan
,
Chuan Zhou
,
Guiying Yan
,
Bin Wang
PDF
Cite
Code
Graph WaveNet for Deep Spatial-Temporal Graph Modeling
Spatial-temporal graph modeling is an important task to analyze the spatial relations and temporal trends of components in a system. …
Zonghan Wu
,
Shirui Pan
,
Guodong Long
,
Jing Jiang
,
Chengqi Zhang
PDF
DOI
Low-Bit Quantization for Attributed Network Representation Learning
Attributed network embedding plays an important role in transferring network data into compact vectors for effective network analysis. …
Hong Yang
,
Shirui Pan
,
Ling Chen
,
Chuan Zhou
,
Peng Zhang
PDF
DOI
CFOND: consensus factorization for co-clustering networked data
Networked data are common in domains where instances are characterized by both feature values and inter-dependency relationships. …
Ting Guo
,
Shirui Pan
,
Xingquan Zhu
,
Chengqi Zhang
PDF
Cite
DOI
Adversarially regularized graph autoencoder for graph embedding
Graph embedding is an effective method to represent graph data in a low dimensional space for graph analytics. Most existing embedding …
Shirui Pan
,
Ruiqi Hu
,
Guodong Long
,
Jing Jiang
,
Lina Yao
,
Chengqi Zhang
PDF
Cite
Code
DOI
Cite
×