Attraction and Repulsion: Unsupervised Domain Adaptive Graph Contrastive Learning Network

No Thumbnail Available
File version
Author(s)
Wu, Man
Pan, Shirui
Zhu, Xingquan
Griffith University Author(s)
Primary Supervisor
Other Supervisors
Editor(s)
Date
2022
Size
File type(s)
Location
License
Abstract

Graph convolutional networks (GCNs) are important techniques for analytics tasks related to graph data. To date, most GCNs are designed for a single graph domain. They are incapable of transferring knowledge from/to different domains (graphs), due to the limitation in graph representation learning and domain adaptation across graph domains. This paper proposes a novel Graph Contrastive Learning Network (GCLN) for unsupervised domain adaptive graph learning. The key innovation is to enforce attraction and repulsion forces within each single graph domain, and across two graph domains. Within each graph, an attraction force encourages local patch node features to be similar to global representation of the entire graph, whereas a repulsion force will repel node features so they can separate network from its permutations (i.e. domain-specific graph contrastive learning). Across two graph domains, an attraction force encourages node features from two domains to be largely consistent, whereas a repulsion force ensures features are discriminative to differentiate graph domains (i.e. cross-domain graph contrastive learning). The within- and cross-domain graph contrastive learning is carried out by optimizing an objective function, which combines source classifier and target classifier loss, domain-specific contrastive loss, and cross-domain contrastive loss. As a result, feature learning from graphs is facilitated using knowledge transferred between graphs. Experiments on real-world datasets demonstrate that GCLN outperforms state-of-the-art graph neural network algorithms.

Journal Title

IEEE Transactions on Emerging Topics in Computational Intelligence

Conference Title
Book Title
Edition
Volume
Issue
Thesis Type
Degree Program
School
Publisher link
Patent number
Funder(s)
Grant identifier(s)
Rights Statement
Rights Statement
Item Access Status
Note

This publication has been entered in Griffith Research Online as an advanced online version.

Access the data
Related item(s)
Subject

Neural networks

Data mining and knowledge discovery

Science & Technology

Technology

Computer Science, Artificial Intelligence

Computer Science

Adaptation models

Persistent link to this record
Citation

Wu, M; Pan, S; Zhu, X, Attraction and Repulsion: Unsupervised Domain Adaptive Graph Contrastive Learning Network, IEEE Transactions on Emerging Topics in Computational Intelligence, 2022

Collections