Shirui Pan
Shirui Pan
Home
Research
TrustAGI Lab
Light
Dark
Automatic
Graph classification
Multiple structure-view learning for graph classification
Many applications involve objects containing structure and rich content information, each describing different feature aspects of the …
Jia Wu
,
Shirui Pan
,
Xingquan Zhu
,
Chengqi Zhang
,
Philip S. Yu
PDF
Cite
DOI
Boosting for graph classification with universum
Recent years have witnessed extensive studies of graph classification due to the rapid increase in applications involving structural …
Shirui Pan
,
Jia Wu
,
Xingquan Zhu
,
Guodong Long
,
Chengqi Zhang
DOI
Task sensitive feature exploration and learning for multitask graph classification
Multitask learning (MTL) is commonly used for jointly optimizing multiple learning tasks. To date, all existing MTL methods have been …
Shirui Pan
,
Jia Wu
,
Xingquan Zhu
,
Guodong Long
,
Chengqi Zhang
DOI
Joint structure feature exploration and regularization for multi-task graph classification
Graph classification aims to learn models to classify structure data. To date, all existing graph classification methods are designed …
Shirui Pan
,
Jia Wu
,
Xingquan Zhu
,
Chengqi Zhang
,
Philip S. Yu
DOI
Multi-graph-view subgraph mining for graph classification
In this paper, we formulate a new multi-graph-view learning task, where each object to be classified contains graphs from multiple …
Jia Wu
,
Zhibin Hong
,
Shirui Pan
,
Xingquan Zhu
,
Zhihua Cai
,
Chengqi Zhang
DOI
Boosting for multi-graph classification
In this paper, we formulate a novel graph-based learning problem, multi-graph classification (MGC), which aims to learn a classifier …
Jia Wu
,
Shirui Pan
,
Xingquan Zhu
,
Zhihua Cai
DOI
CogBoost: boosting for fast cost-sensitive graph classification
Graph classification has drawn great interests in recent years due to the increasing number of applications involving objects with …
Shirui Pan
,
Jia Wu
,
Xingquan Zhu
DOI
Finding the best not the most: regularized loss minimization subgraph selection for graph classification
Classification on structure data, such as graphs, has drawn wide interest in recent years. Due to the lack of explicit features to …
Shirui Pan
,
Jia Wu
,
Xingquan Zhu
,
Guodong Long
,
Chengqi Zhang
PDF
Cite
DOI
Multi-graph-view Learning for Graph Classification
Graph classification has traditionally focused on graphs generated from a single feature view. In many applications, it is common to …
Jia Wu
,
Zhibin Hong
,
Shirui Pan
,
Xingquan Zhu
,
Zhihua Cai
,
Chengqi Zhang
DOI
Cite
×